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23 April 2021 Preliminary Assessment of Carbon and Nitrogen Sequestration Potential of Wildfire-Derived Sediments Stored by Erosion Control Structures in Forest Ecosystems, Southwest USA
James B Callegary, Laura M Norman, Christopher J Eastoe, Joel B Sankey, Ann Youberg
Author Affiliations +
Abstract

The role of pyrogenic carbon (PyC) in the global carbon cycle is still incompletely characterized. Much work has been done to characterize PyC on landforms and in soils where it originates or in “terminal” reservoirs such as marine sediments. Less is known about intermediate reservoirs such as streams and rivers, and few studies have characterized hillslope and in-stream erosion control structures (ECS) designed to capture soils and sediments destabilized by wildfire. In this preliminary study, organic carbon (OC), total nitrogen (N), and stable isotope parameters, δ13C and δ15N, were compared to assess opportunities for carbon and nitrogen sequestration in postwildfire sediments (fluvents) deposited upgradient of ECS in ephemeral- and intermittent-stream channels. The variability of OC, N, δ13C, and δ15N were analyzed in conjunction with fire history, age of captured sediments, topographic position, and land cover. Comparison of samples in 2 watersheds indicates higher OC and N in ECS with more recently captured sediments located downstream of areas with higher burn severity. This is likely a consequence of (1) higher burn severity causing greater runoff, erosion, and transport of OC (organic matter) to ECS and (2) greater cumulative loss of OC and N in older sediments stored behind older ECS. In addition, C/N, δ13C, and δ15N results suggest that organic matter in sediments stored at older ECS are enriched in microbially processed biomass relative to those at newer ECS. We conservatively estimated the potential mean annual capture of OC by ECS, using values from the watershed with lower levels of OC, to be 3 to 4 metric tons, with a total potential storage of 293 to 368 metric tons in a watershed of 7.7 km2 and total area of 2000 ECS estimated at 2.6 ha (203-255 metric tons/ha). We extrapolated the OC results to the regional level (southwest USA) to estimate the potential for carbon sequestration using these practices. We estimated a potential of 0.01 Pg, which is significant in terms of ecosystem services and regional efforts to promote carbon storage.

Introduction

Globally, organic carbon (OC) and total nitrogen (N) stored in soil organic matter (SOM) have been depleted due to watershed degradation and agricultural management practices.13 Wildfire also results in losses of SOM due to combustion at higher temperatures, and exposure and oxidation of soil aggregate-protected OC caused by lower temperature fires.4 Losses are expected to continue, as climate change is predicted to increase fluxes of soil C to the atmosphere, mainly from peat, wetlands, and thawing permafrost. Such additions to the atmosphere could be partly offset by restoration of SOM. There is thus a need to investigate practices and techniques that enhance long-term organic matter (OM) storage. One technique that has a long history of being used both locally and globally to retain soil and water is installation of erosion control structures (ECS).5,6 They have been used in watershed and riparian restoration, in agriculture for soil conservation, and after wildfires to stabilize slopes and capture sediments in stream channels.611 They also have been shown to store SOM and OC12,13 and have the potential to store pyrogenic carbon (PyC) from wildfires.

Pyrogenic carbon has been identified as a potentially significant sink in the context of the global carbon cycle, and a growing body of work has been done on understanding PyC stability, composition, fluxes, and storage in soils, lakes, and marine sediments.1416 Ash and char production and destabilization and erosion of hillslope soils lead to increases in delivery of nutrients and sediments to streams. This can negatively affect water quality and aquatic ecosystems17,18 and lead to loss of carbon and nitrogen from watersheds. Consistent with recent experience, climate-change modeling predicts significant increases in wildfire frequency and extent, and postfire erosion rates in the coming decades in the western USA.19,20 Before intensive logging in the late 1800s,21,22 forests in the southwest USA were burned by frequent, low-severity, and widespread fires.23 By the late 20th century, fuel accumulation and prolonged drought conditions were leading to wildfires of increased size and severity, a trend expected to increase as climate change leads to higher temperatures and increased evapotranspiration in the southwest USA.24 Larger, hotter fires may be pushing mountain terrains toward geomorphic and ecosystem tipping points,25,26 potentially leading to permanent loss of OM that accumulated over centuries to millennia.2734 It is thus timely to study and assess methods that can be applied after wildfires to retain carbon- and nitrogen-rich soil, wood, ash, and char.

This preliminary study considers possibilities for retention of wildfire-derived OM in sediments stored by ECS in forest ecosystems of the southwest United States. We hypothesize that ECS can be used to capture and sequester PyC and eroded SOM and that as surficial OM matures, some OC and N will be lost from the soil through leaching and/or diffusion. We use information on landcover, ECS characteristics (size, age, geomorphic setting), OC, total N, and stable isotopes to (1) evaluate the potential of ECS to retain and store OC and N in postwildfire transported sediments of the southwest USA and (2) discuss processes that may be affecting the amount and properties of retained OM over time.

Background

Erosion control structures are one of many tools used to stabilize and restore degraded watersheds and mitigate impacts of fire-induced nutrient and sediment transport.3841 Check dams of varying permeability can be made from a variety of materials ranging from brush fill to natural stone, masonry, and packed earth.6,42 Site selection and dam design depend on project objectives and factors such as channel shape and dimensions, access, slope, vegetation, soils, geology, proximity to erosion, dam type, cost, number of and distance between check dams, and flood frequency and magnitude. If ECS are improperly sited or constructed, negative impacts can range from neutral to catastrophic (for example, cascading failure in ECS networks during floods or debris flows43). When properly sited and installed, however, they can offer opportunities for capture and rapid burial of mobilized aboveground-biomass, SOM, and PyC.44,45 Organic matter, OC, and N sequestration by ECS have been studied12,44,4649 especially where saturated or semisaturated conditions persist in the trapped sediments. This creates conditions similar to wetlands which have a well-documented OC sequestration potential.50

The study area was located in 2 forested watersheds in the Chiricahua Mountains of southeastern Arizona, USA (Figure 1). The watersheds are similar in elevation, vegetation assemblages, geology, and soils, but have different burn severity51 and restoration histories. The Turkey Pen watershed (referred to as Lower Burn Severity Older ECS or LBSO) has an area of about 7.7 km2, with elevations ranging from 1760 to 2310 m. About 70% of LBSO has slopes greater than 30%. The Coal Pit watershed (referred to as Higher Burn Severity Newer ECS or HBSN) has an area of about 4.8 km2 with elevations ranging from 1730 to 2500 m. Approximately 80% of the watershed has slopes greater than 30%. Bedrock in both watersheds consists of faulted intrusive and extrusive rhyolite and rhyodacite of late Paleogene age.52,53 Precipitation increases with elevation and ranges between 385 and 660 mm per year with most of it arriving between July and mid-September via isolated convective storms.54 Winter precipitation occurs from November to March and falls as snow at higher elevations. The dominant vegetation type in the lower reaches of the watersheds, and particularly in LBSO, is Madrean Pinyon-Juniper-Oak Woodland which includes local patches of grasses and shrubs.55 Common species include alligator juniper (Juniperus deppeana), oak (Quercus spp.), and pinyon pine (Pinus edulis, Pinus cembroides). Madrean Lower Montane Pine-Oak Forest and Woodland also occurs, favoring mesic slopes and valley bottoms in the upper reaches of the 2 watersheds. This forest type is dominated by Chihuahuan (Pinus leiophylla), Apache (Pinus engelmannii), and pinyon (Pinus discolor) pines and alligator juniper (Juniperus deppeana). Ponderosa pine (Pinus ponderosa) and Douglas fir (Pseudotsuga menziesii) are locally abundant at higher elevations, and oak (Quercus spp.) at lower elevations.

Figure 1.

(A) Turkey Pen-LBSO (yellow) and Coal Pit-HBSN (green) watershed boundaries, and sampling locations, where LBSO stands for Lower Burn Severity Older ECS and HSBN stands for Higher Burn Severity Newer ECS. Inset map at left indicates location of study area in North America in the state of Arizona, USA. Parts (B) (Turkey Pen-LBSO) and (C) (Coal Pit-HBSN) with sampling locations and names (note some locations are too close together to distinguish at this scale). Burn severity35,36 from the 2011 Horseshoe 2 Fire37 is overlain on each watershed (red = high burn severity, orange = moderate burn severity, yellow = low burn severity, green = unburned).

ECS indicates erosion control structures; HBSN, higher burn severity newer; LBSO, lower burn severity older.

10.1177_11786221211001768-fig1.tif

Watershed restoration, primarily ECS installation, began in the LBSO in the first half of the 1980s56 and in the HBSN in the 1990s (pers. comm. Valer Clark, 2016). Erosion control structures were installed in ephemeral and temporally and spatially intermittent streams. Globally, such streams present a widely available opportunity for OM storage as they make up more than half the combined length of rivers and streams.57,58 The structures were primarily constructed of loose-rock, including 1-rock structures on hillslopes and in-channel structures (eg, check dams and gabions) to act as sediment traps (Figure 2). Once the network of ECS was installed, flood peaks were reduced, overall flow volume increased,59 and few ECS failed even in larger floods (pers. comm. Valer Clark, 2016). Hillslope structures, about 90% of all ECS in the study area, typically consisted of dams 1-rock high and 1-rock thick placed at points of incipient erosion perpendicular to the direction of maximum slope. All ECS in the study area were permeable. Most ECS in LBSO and HBSN were filled to capacity with prefire sediment before the 2011 Horseshoe 2 Fire, which burned over 90 000 ha in the Chiricahua Mountains.26 This included portions of the LBSO and HBSN watersheds, with high or moderate burn severity in 18% of LBSO and 28% of HBSN.36,37,51 After the fire, previously installed and filled ECS were extended and repaired in HBSN but not LBSO, creating additional capacity for sediment capture HBSN. Rains following the fire caused flooding and debris flows.26 There is no information on scour and fill history or OM delivery in the previously filled ECS in either watershed prior to the 2011 wildfire, but the newly expanded ECS in HBSN were filled with sediments rich in PyC including ash and charred wood (pers. comm. Valer Clark, 2016). In this study, we use both soil and sediment as terms for the material captured by ECS. Because the streams investigated are ephemeral and intermittent nd because of the ECS network, captured sediments that tend to be stable through time and only seasonally saturated throughout the profile. This creates a blend of terrestrial and fluvial conditions that allow soil forming processes to occur.

Figure 2.

Examples of erosion control structures (ECS) used in the study. Location names: (A) Middle LBSO, (B) Hillslope LBSO, and (C) Middle HBSN.

ECS indicates erosion control structures; HBSN, higher burn severity newer; LBSO, lower burn severity older.

10.1177_11786221211001768-fig2.tif

As this was a preliminary survey of OC and N, soil surveys were not carried out, but soil descriptions are available via lower (STATSGO2) and higher (SSURGO) resolution state-level surveys.60 The higher resolution surveys are available only for small portions of the study area near the watershed outlets. However, it is likely that the classifications are valid for nearby in- and near-channel soils and sediments on adjacent National Forest lands which constitute the bulk of the study area. In general, both watersheds consist of steep slopes with abundant rock outcrops, with in-channel sediments generally classified as Inceptisols and Entisols, and near-channel soils classified as Mollisols and Entisols.

Measurements of isotopic parameters δ13C and δ15N were critical to understanding the impacts of ECS in this study. Values of δ13C can be used to distinguish OM from C3 (predominantly woody cool-season species) or C4 (predominantly warm-season herbaceous) plants.61 It is probable that the majority of the grasses in the study area are C462 The range of δ13C in C3 plants in arid ecosystems is about −25 to −27 ‰,63 and globally the range of δ13C in C4 plants has been estimated to be −10 to −15 ‰.64 Thus in soils, lower values of δ13C could imply a greater proportion of C derived from C3 plants.65 Moreover, the preferential survival of biomass from woody C3 plants in contrast to easily-decomposed herbaceous C4 plants could lead to δ13C of sediments being dominated by a C3 isotopic signature.66

Values of δ13C can increase with increasing soil depth and decreasing OC concentration67 as well as with degree of decomposition and age.64 Decay of coarse woody debris can lower the δ13C of the remaining biomass, likely due to preferential loss of cellulose in which δ13C is higher than more resistant lignin. Preston et al68 summarized and confirmed the results of several studies, with lignin in selected evergreen species having δ13C ranges 1.7 to 3.3 ‰ lower than whole wood and 3.0 to 4.4 ‰ lower than cellulose. A similar effect was noted in saltmarsh grass.69 Microbial decomposition of OM may affect δ13C by adding atmospheric and/or soil-gas CO2 to SOM,64 and fungal mycelia have been shown to incorporate CO2 labeled with 14C.70 Such processes would result in an increase in δ13C with age and degree of decomposition due to a combination of (1) microbial carboxylation of OM using ambient soil CO2 (which is enriched in 13C relative to the OM being decomposed), and (2) the “Suess effect,” a decline in δ13C in atmospheric CO2 of about 1.5 ‰ since about 1960 to its current level of −8.5 ‰.64,7074

Wildfire can affect δ13C in OM, and the magnitude and direction of the effect depends on factors such as species, temperature, and duration of burning or charring. Some researchers have found little change in ash and charcoal from C3 plants but shifts as large as 8 ‰ in δ13C of burned C4 OM.7577 Others78 have found that low-temperature (150°C) charring causes δ13C to increase in both softwood and hardwood (possibly due to volatilization of hydrocarbons), but higher temperatures, 340°C-480°C, lead to a decrease likely due to preservation of lignin and loss of cellulose. Another factor to consider is transport of PyC. It has been found that C4-derived PyC is transported preferentially in watersheds, possibly due to small particle size relative to C3 PyC.79

With respect to δ15N in soils, several studies have found increases with depth and age related to microbial decomposition and/or effects of SOM-mineral association.8082 Ammonification and nitrification have the largest potential effects on δ15N, with nitrate, nitrite, and ammonia products being depleted in 15N by as much as 20‰ relative to fresh OM. Removal of these products by leaching or denitrification would lead to an increase in δ15N of the residual OM. Under conditions similar to wildfires, Pyle et al83 found residual-biomass δ15N increased with charring intensity. Processes other than wildfire can also affect δ15N, but not necessarily in predictable ways. For example, δ15N in soils is likely to change during ecosystem disturbances such as grazing and during postdisturbance recovery, but the direction of change is inconsistent.84

Methods

Sampling site selection and description

A total of 22 sites were sampled at 7 locations (Figure 1; Table 1). Sampling locations were selected to represent geomorphic settings of interest: one ECS on a hillslope in LBSO, and in each watershed 2 ECS in stream channels and 1 terrestrial “off-channel” location (Figure 2). The off-channel locations were located to the side of each channel to investigate terrestrial conditions. They were situated on slopes that were normally unaffected by flooding and without ECS. In each watershed, one in-channel sampling location was located near the watershed outlet and one was located at an upstream location. A larger number of “in-channel” locations was assessed with the expectation that most OC and N would be stored in them, and therefore that understanding variability in these was a greater priority.

Table 1.

Sample site names, coordinates, sampling depth, and results of analysis for %C, %N, C/N, δ13C, and δ15N.

10.1177_11786221211001768-table1.tif

At each in-channel and hillslope location 4 sites (A-D) were sampled in the sediment upstream of each ECS to gain information on horizontal variability of measured parameters. Two depth intervals were sampled at each site to study vertical variability (0-10 cm and 20-30 cm below the mineral soil surface). During sampling, leaf litter and grass were removed to expose the mineral soil surface and in a few cases slight adjustments to the depth of the sample were necessary due to the presence of cobbles or bedrock. No information was available to assess whether the grasses were perennial or annual or of C3 or C4 types. However, it is likely they are C4, given the predominance of C4 grasses regionally.62 All samples were assessed visually for color, texture, and roots, leaves, and charcoal. At each location, ECS dimensions were measured including height and width and an estimate of the upstream length of the sediment wedge (Figure 3). The volume of captured sediment was estimated using the equation for a half elliptical paraboloid (Table 2).85

Figure 3.

Geometry of sediment sampling sites relative to erosion control structures.

10.1177_11786221211001768-fig3.tif

Table 2.

Dimensions of erosion control structures and estimated volume of captured sediments.

10.1177_11786221211001768-table2.tif

In LBSO, 4 locations are represented: 2 in-channel ECS (with names: UPPER LBSO and MIDDLE LBSO (Figure 2A)), plus HILLSLOPE LBSO A to D (Figure 2B) and OFF-CHANNEL LBSO. The results and site information are found in Tables 1 and 2. They may also be found by following the highlighted link above to the USGS National Water Information System. The total number of sites in LBSO is 13: 3 locations with 4 sampling sites each (A thru D), and one with one sampling site (location name = Off-Channel LBSO). The channel at the Upper LBSO site was dry at the time of sampling with shallow gravelly sediment, high slope, and exposed fractured bedrock adjacent to the stream channel. The next site down gradient was Hillslope LBSO. This site and the adjoining area generally have low slope, covered with leaves and grass, and unknown depth to bedrock. The site furthest downstream, Middle LBSO, had a shallow water table at the time of sampling as evidenced by a pool of water downstream of the ECS. It is often flooded during the summer rainy season (Valer Clark, personal communication, 2016).

Three locations were sampled in HBSN: 2 in-channel sites (with names UPPER HBSN and MIDDLE HBSN (Figure 2C)), plus OFF-CHANNEL HBSN. The total number of sites in HBSN is 9: 2 locations with 4 sites each (A thru D), and 1 with 1 site (location name = Off-Channel HBSN). The Upper and Middle HBSN sites have soils in the upper 2 m that had been deposited at most 5 years before sampling and are commonly flooded in summer (Valer Clark, personal communication, 2016). At the Upper HBSN site, a sample was taken of the thick (about 15 cm) aerially extensive (about 30 m2) in-channel cover of leaf litter. This consisted primarily of oak leaves but also of twigs and pine needles, all of which were presumed to originate from overhanging trees, upstream forest, and surrounding hillslopes.

Laboratory procedures

In the laboratory, standard procedures were followed. Samples were weighed, ground to break up aggregates, passed through a 2-mm sieve,86 then oven dried at 60°C for at least 48 h until weight stabilized. Dried samples were ground to a uniform consistency, passed through a 0.25 mm sieve and weighed. Sieve ranges of 0.10 and 0.15 mm are common, but soils that pass through a 0.25-mm mesh do not give statistically different results.87 Samples were analyzed for %OC, %N, δ13C, and δ15N at the University of Arizona Environmental Isotope Laboratory using an elemental analyzer (Costech) coupled to a Finnigan Delta Plus XL continuous flow mass spectrometer. Carbonates were removed by addition of H2SO3. In the elemental analyzer, after dry combustion, OC and nitrogen fractions were determined by gas chromatography. A minimum of one acetanilide standard was run with every 10 samples. The acetanilide was calibrated against NBS-22 and USGS-24 for δ13C, and IAEA-N-1 and IAEA-N-2 for δ15N. Precision is better than ±0.08‰ for δ13C and ±0.2‰ for δ15N (1σ), based on repeated internal standards. Organic carbon and total N were reported as percent OC and total N in the <0.25-mm fraction. These values were converted to percentages of the total sample using the mass ratio of the <0.25-mm fraction to the total sample (Table 1). Monthly values of standards for the year prior to the measurements indicated acceptable instrument stability. Certain samples had mass of N below the range of standards. To remedy this, we prepared a set of standards to extend the range and used established approaches to determine method detection and quantitation limits.88 We determined a method detection limit of 0.015 mg N, and a quantitation limit of 0.03 mg N. The data were reviewed according to USGS protocols and stored in the USGS National Water Information System.89

Modeling and statistical analysis

Procedures for comparing central tendencies were performed using NADA for R88,90,91 and ProUCL.92 For samples with uncensored data, either Wilcoxon Rank Sum88 or Wilcoxon-Mann-Whitney92 methods were used. The Wilcoxon Signed Rank test was used to compare paired (matched) samples collected at the same site at different depths.88 Censored data were those values of N that fell between the limits of quantitation (0.03 mg N) and method detection (0.015 mg N). For censored data, all tests were carried out using the Gehan method.92

We calculated the potential mean annual capture of OC by combining information from the LBSO and HBSN including median OC of the hillslope and in-channel sites both depths, estimated sediment volumes (Table 2) and published modeling results of annual sediment accumulation rates for ECS in LBSO.56 We use the full range of data available from both watersheds to make the results more widely applicable. In the previously published modeling work, it was estimated that ECS could retain about 178 to 242 metric tons of sediment per year. Using this range of values, their count of 2000 ECS with 90% on hillslopes, and the mean and median OC content from all in-channel samples (Table 1), we estimated the annual capture of OC in the group of 2000 ECS using equation (1)

10.1177_11786221211001768-eq1.tif

where RateCC is the rate of carbon capture in metric tons per year, RateSC is the rate of sediment capture in metric tons per year, and FxOC and FxSed are, respectively, the fraction of total OC and fraction in each geomorphic setting of the total sediment captured by ECS (Table 3).

Table 3.

Potential annual capture rate of organic carbon in ECS-captured sediments.

10.1177_11786221211001768-table3.tif

To calculate the total potential storage and storage per hectare in LBSO, the following equation was used with input data from Table 4

Table 4.

Estimate of total potential storage of organic carbon and storage per unit area in ECS-captured sediments.

10.1177_11786221211001768-table4.tif
10.1177_11786221211001768-eq2.tif

where for each geomorphic setting, VolSed is the median volume of sediment, FxOC is the median fraction of total OC, ECS is the number of ECS, and ρb is bulk density in metric tons per cubic meter derived from the Rafter Soil Series.60 Carbon storage per hectare is calculated by dividing STOT by the estimated total area of ECS in LBSO.

To illustrate the potential for ECS to store OC if they were implemented on a large scale, we carried out a modeling experiment by extrapolating the results of the study to the forests of the southwestern United States (Figure 4). Multiple sources of uncertainty exist (eg, not all sites are suitable for reasons of slope, geology, etc). The intention, however, is not to provide an exact estimate, but to begin a discussion of the possibilities for ECS-induced OC sequestration over large areas using modeling as a virtual laboratory. To begin, we assumed that forested areas in the southwest USA have the potential for 2.6 ECS per hectare, which is the estimated spatial density of ECS in the LBSO watershed (Table 4). For a conservative estimate, we used the lower %OC values in LBSO, which will be shown below to represent longer-term storage of OC. The structures in this watershed are older (most are between 20 and 35 years old: Valer Clark, personal communication, 2016), sediments tend to be wetter, and as a result SOM is potentially closer to long-term values. Organic carbon is likely to be retained in cases where soils remain saturated and have low oxygen concentrations, conditions similar to wetland soils.38,9396

The calculation of the potential total C sequestration requires estimates of volumes of sediment captured by ECS. The estimate was developed using the measured dimensions of the hillslope and in-channel sites (Table 2) and the equation for volume of a half elliptical paraboloid.85 Total potential for C sequestration was then calculated by multiplying the estimated sediment capture volumes, ECSpot, an estimate of soil bulk density (ρb), and the average weight-percent C found in hillslope (OCHill) and in-channel (OCChan) ECS (equation (3)). We estimated CTot and the uncertainty therein using a Monte Carlo approach that accounts for uncertainties in each of the input variables. We carried out a total of 5000 realizations. Input values and error terms for the following equation are summarized in Table 5

10.1177_11786221211001768-eq3.tif

where CTot is the potential for C sequestration (mass C) stored behind ECS in southwest USA Forests, FA is the area of forest in the southwest USA extracted from the National Land Cover Database,97 ρb is soil bulk density derived from the Rafter Soil Series,60 ECSpot is the potential number of ECS per unit area.56 Combining data from both LBSO and HBSN, VolHILL and VolChan are the estimated volumes of sediment retained upstream of hillslope and channel ECS (Table 2), and Chill and Cchan are the mean measured OC contents in samples of sediment retained upstream of hillslope and channel ECS expressed as a fraction by weight. Error terms “e” were estimated for each variable in the Monte Carlo simulation. The factors 0.1 and 0.9 in equation (1) were based on the assumption that approximately 10% of ECS were installed in channels and 90% on hillslopes. The 5000 realizations of CTot were log-transformed to more closely approximate a normal distribution.

Figure 4.

National Land Cover Database 2011 for the southwest USA.97 Forests are indicated by areas in green. The green pentagon symbol indicates the location of the study area.

10.1177_11786221211001768-fig4.tif

Table 5.

Mean and error of variables used in equation (1) to calculate the potential for ECS-sequestered organic carbon in the Southwest USA. Estimated errors are standard deviations of a normal distribution.

10.1177_11786221211001768-table5.tif

Results

Soil, sediment, and leaf litter composition

The ranges of OC, N, and C/N of soils, sediments, and leaf litter were found to be within typical ranges for forest soils in the semiarid southwest USA63 with OC ranging from 0.1% to 9.9% (median: 0.8%) and N from 0.01% to 0.6% (median: 0.1%). The range of δ13C was −26.2 to −22.3 ‰ with a median of −24.7 ‰ which is slightly lower than the lower range for C3 plants in arid ecosystems (Figure 5A).63 Values of δ13C at 30 cm were generally higher than at 10 cm. The range of δ15N was −4.8 to +6.2 ‰, with a median of +1.3 ‰ (Figure 5B). The C/N (mass) ratio ranged from 11 to 33 with a median of 17.5. As expected, OC and N were linearly related, as soil N and C cycles are typically closely coupled and controlled by microbial communities.98,99

Figure 5.

C/N plotted against (A) δ13C and (B) δ15N. Values of samples from LBSO are shown in shades of red or orange. Those from HBSN are blue or green. Samples taken from the 10-cm depth are indicated by circles and 30-cm depths by triangles. Censored data are not shown except for the off-channel LBSO 30-cm sample. Its C/N is imprecise because of a below-method-detection-limit N measurement, but it is plotted to show the magnitude of δ13C and δ15N relative to other samples.

HBSN indicates higher burn severity newer; LBSO, lower burn severity older.

10.1177_11786221211001768-fig5.tif

The two watersheds studied were significantly different with respect to all parameters measured. Values from HBSN samples were higher in OC, N, C/N, and lower in δ15N and δ13C than LBSO, and C/N plotted against δ13C and δ15N shows clear groupings for each watershed (Figure 5; Table 1). Depth was not generally a significant factor with the exception of δ13C in HBSN (0.5 ‰ difference, 10 cm < 30 cm) and δ15N in LBSO where, contrary to expectations,80,81 they were significantly higher at 10 cm than at 30 cm depth. The single hillslope sample from LBSO had values of δ13C, δ15N, and C/N intermediate between those of in-channel sediments from LBSO and HBSN.

Leaf litter was primarily oak leaves though some pine needles and twigs were present. Leaf litter (and the ash derived from it) was of interest because it represents one of the possible sources of OC and N in captured sediments. The leaf litter was sampled at the Upper HBSN site. δ15N of the leaf litter, −1.1 ‰, was near the median for HBSN sediment samples. It had the highest OC, 16.8%, and N, 0.6%, and the lowest δ13C, −26.2 ‰, which is near the middle of the typical range for C3 plants in dry ecosystems.63 The leaf litter had one of the highest C/N values in the study, 28.7, though this is lower than the average C/N, 68, for temperate oak leaf litter.67 Three samples had C/N higher than 28.7, all at the Upper HBSN site.

Off-channel soils, in contrast to the ECS-associated sediments, represent soil profiles unaffected by frequent flooding, seasonal inundation, and accompanying erosion/deposition. In HBSN, the 10-cm depth off-channel sediment resembled in-channel sediments in δ13C, δ15N, and C/N, but the 30-cm depth had higher δ13C, −23.8 ‰, δ15N, +3.8 ‰, and lower C/N, 17.3 (Figure 5). In fact, the highest values of δ13C and δ15N and lowest C/N in that watershed were found off-channel at the 30-cm depth. At the HBSN off-channel site, OC was higher at both depths than the comparable sample in LBSO. In LBSO, 10-cm depth off-channel sediment resembled in-channel sediment except in δ13C, −22.3 ‰. Off-channel sediment at 30-cm depth was distinct from in-channel sediment in δ13C, −22.3 ‰ and δ15N, +6.3 ‰, but not in C/N.

Capture of OC and N by ECS

Both OC and N at the ECS in HBSN were higher (by a factor of 2 or more at 10 cm, and a factor of 10 or more at 30 cm) than in off-channel samples (Figure 5; Table 1). Values of N followed a similar pattern at LBSO. However, in-channel OC values in LBSO were not as readily distinguishable from off-channel values, especially at the 10-cm depth.

A previous study of the LBSO watershed using coupled rainfall-runoff and sediment transport modeling found that the ECS in that watershed can retain about 178 to 242 metric tons of sediment per year (although we expect that this rate would decline as ECS fill over time).56 Using this range of values and equation (1), we estimated the mean potential annual capture of OC in LBSO to be 5 to 6 metric tons, and the median to be 3 to 4 tons (Table 3). The difference between mean and median is caused by data outliers that skew the mean. We also calculated the range of total potential storage in LBSO using our estimated range of ECS storage volumes, OC content, and estimates of bulk density.60 The range of total potential OC storage was about 293 to 368 metric tons, corresponding to a range of 203 to 255 metric tons per hectare of ECS (Table 4). Although filling these structures via the simulated annual rate would take many decades, most of the filling would likely occur during a few postwildfire floods. The modeling for the entire region yielded a conservative regional estimate of total sequestration potential of 0.0109 Pg of OC with a 95% confidence interval of 0.0104 to 0.0114 Pg (Table 3).

Discussion

Watershed comparison

The differences between the 2 watersheds are notable, given their similar size and location. In HBSN, ECS extended or constructed after the 2011 Horseshoe 2 fire filled with black flood-transported postfire debris (Valer Clark, personal communication, 2016). Thus, the higher OC and N in HBSN likely reflect the higher burn severity and more recent filling of new ECS. Values of δ13C and δ15N in LBSO are generally higher than in HBSN and C/N lower. Hypotheses to explain the general increase of δ13C and δ15N as C/N decreases (Figure 5) include (1) progressive decomposition decreases C/N and increases δ13C as original SOM is replaced by increasing amounts of microbially processed OM over time; (2) C4 grass growing on ECS-captured sediments and greater proportion of C4 plants in LBSO watershed contributing C4-rich OM to sediment; and (3) higher burn severity in HBSN, leading to PyC-rich sediments containing proportionally more lignin than LBSO (lignin having lower δ13C than whole wood).68,100 Hypothesis 2 can be rejected because grass is present at all sites in both watersheds and grass straw and its combustion products have high C/N.101 Thus, increasing the amount of C4 OM would not be expected to lead to the observed trend of increasing δ13C with decreasing C/N. Hypothesis 3 can also be rejected because lignin has high C/N. Two arguments favor hypothesis 1. First, hypothesis 1 is consistent with the ages of ECS sediment: upper layers of HBSN sediment are younger than those in LBSO. Second, HBSN leaf litter (representing a source of OM in ECS) that is unaffected by burning is among the samples with lowest δ13C and highest C/N.

Off-channel soils

Off-channel soils, in contrast to the ECS-associated samples, represent soil profiles unaffected by frequent flooding, seasonal inundation, and accompanying erosion/deposition. At the HBSN off-channel site, OC was higher at both depths than in the comparable sample in LBSO (Figure 5), consistent with the higher proportion of C3 plants (having greater lignin content) observed in HBSN, possibly due to greater proportion of OM derived from C4 plants. In HBSN, the highest values of δ13C and δ15N and lowest C/N in that watershed were found off-channel at 30 cm depth. A possible explanation for the high δ13C may be greater incorporation of δ13C-enriched soil CO2 in older more microbially processed SOM at depth,64.102 With respect to δ15N, an accompanying increase with depth and age82,103,104 is consistent with a combination of 1) removal of soluble and gaseous N species with low δ15N, such as ammonia and nitrate, which are readily transported away leaving behind 15N-enriched OM105,106 and (2) progressive stabilization by mineral particles as this 15N-enriched OM is transported downward.81 Similar explanations can be used to understand differences in δ13C, δ15N, and C/N between the 10- and 30-cm depths at the off-channel sites with the potential addition of the Suess effect decreasing δ13C in younger, shallower SOM and/or increasing prevalence of C4 plants over time.64,74

Sequestration potential

The high OC and N contents of young (< 5 years) in-channel sediment relative to off-channel sediment at HSBN demonstrates the potential for sequestration of SOM, at least in the short term, of postwildfire sediment capture by ECS. However, older (up to 35 years) in-channel sediment at LBSO was not as readily distinguishable from off-channel sediment, suggesting that, over the long-term, sequestered OC in frequently-unsaturated surficial channel sediments that are well oxygenated may come to resemble levels in nearby soils. The amounts stored under these conditions are lower, but long-term storage may still be significant, given that OM and especially PyC have mean residence times in soil on the order of decades to millennia.16 In addition, deeper sediments upstream of ECS are more likely to remain saturated. Moreover, when ECS are distributed at sufficiently high density across the landscape, they seldom fail even after heavy rainfall, and significant scour and redeposition events are unlikely to occur (Valer Clark, personal communication, 2016). With this combination of physical stability, chemical recalcitrance, and low oxygen environment, deeper PyC-rich sediments behind ECS may come to resemble wetland soils over time, and ultimately sequester larger amounts of OC than unsaturated soils.

Carbon capture rate, storage, and regionalization

The mean potential annual capture of OC estimated by combining information from the 2 study watersheds was 5 to 6 metric tons (equation (1), Table 2). The median was estimated to be 3 to 4 tons. The difference in the 2 is caused by outliers which underscores the spatial variability of OC. This is likely due to differences in composition of deposited sediment caused by differences in flood magnitude and watershed and burn characteristics. We also calculated the potential OC storage per hectare with a range of about 200 to 250 metric tons per hectare. This is similar to the range of OC stored in some wetlands.

Given the potential for OC storage by ECS suggested by these results and the projection that the Southwest United States will undergo more than a doubling in post fire sedimentation in the coming decades,20 estimating sequestration potential is timely. Although small compared to estimates of OC in global fire emissions (2.2 Pg yr1)107 and storage in soils, the potential OC sequestration for the southwest USA is substantial in terms of ecosystem services and regional efforts to promote storage and reduce losses of carbon. If ECS are installed at a density that stabilizes a watershed, and sediments become saturated or semisaturated at depth, buried SOM may become effectively sequestered. The captured OM is transformed over time by microbial processes, reflected in lower C/N and increases in δ13C and δ15N. This stored OM could aid in the restoration of ecosystem services,108 especially hydrologic functioning. Water holding capacity is improved, supporting slow release of water downstream.38,59,95,109 We suggest that maintenance of the OC stored by ECS is dependent on quantity of recalcitrant OM such as lignin, persistence of low-O2 saturated or semisaturated conditions in deep ECS sediments, and the areal density of ECS. To the extent that these conditions are not met, long-term storage of OC may be less than estimated.

Conclusions and Future Research

Measurements of OC and N in 2 watersheds with ephemeral and intermittent streams indicated that ECS retain OC within ephemeral channels at levels that are comparable to off-channel terrestrial soils or even higher in young (<5 years) captured wildfire-derived sediments. The construction of ECS can therefore potentially reduce transport and loss of OC and N from wildfire-affected watersheds by capturing PyC and other OM. In the combined data set for both watersheds, measurements of δ13C and δ15N generally increase as C/N decreases. This observation is best explained by progressive decomposition as original SOM is replaced by increasing amounts of microbially processed OM.

With respect to capture and sequestration of OC, total potential storage of OC was calculated to range from about 200 to 250 metric tons per hectare of ECS-stored sediments, similar to the amount stored in some wetlands. The modeled value of potential sequestration of OC in ECS over the southwestern USA lies within a 95% confidence interval of 0.0104 to 0.0114 Pg, similar in magnitude to the annual increase in OC in U.S. soils.110

Suggestions for future work include duplication of this work at sites in different ecosystems and in perennial streams. Given that sediments behind larger ECS can be 10-m thick or more, using classical and geostatistical design to select number of samples and horizontal and vertical locations would improve evaluation of the magnitude and spatial variability of measured parameters. In addition, there is a need to improve understanding of the effects of water content, redox potential, and microbial processes on timing and extent of OC and N transformations in ephemeral- and intermittent-stream channels. Detailed data from precipitation, sediment sampling, and stream-gage networks and knowledge of the prefire distribution of C3 to C4 plants would aid in understanding inputs to ECS. Future work may also address the effects of adding char and compostable material/green waste to ECS to promote ecosystem services and sequestration of C and N from other sources.111 It has been found that wood and leaves from different species and with differing weathering status are transported and degraded differently.112,113 Moreover some types of wood, depending on physical and biochemical conditions, can persist for hundreds to thousands of years when buried.114,115 It would thus be useful to investigate the effect of vegetation type, soil properties, burial depth, elevation, and climate on OC storage in terms of quantity, biogeochemical processing, and persistence.

Acknowledgements

This research was conducted with support from the Land Change Science (LCS) and Land Carbon Programs in the Land Resource Mission Area of the U.S. Geological Survey (USGS). Joel Sankey was supported by the USGS Ecosystems Mission Area. The authors thank Valer Clark and Josiah Austin for their work in installing ECS in the study area and for providing access to their property and knowledge about their work, Natalie Wilson (USGS) for her help in processing samples, and David Dettman and the Environmental Isotope Laboratory at the University of Arizona for their analyses of isotopes. They appreciate the careful peer reviews of this manuscript provided by Alison Appling (USGS) and those provided by Air, Soil and Water Research journal associate editor, Dr Claudia M. Rojas Alvarado and 2 anonymous reviewers. References to commercial vendors of software products or services are provided solely for the convenience of users. Such references do not imply any endorsement by the U.S. Government.

Author Contributions JBC: experiment and system conceptualization, experimentdesign and implementation, results’ technical interpretation, and text writing. LNM: experiment and system conceptualization, implementation, text writing. CJE: development of system conceptual model, implementation, results’ technical interpretation, and text writing. JBS: development of system conceptual model and numerical modeling, AY: development of system conceptual model.

Disclaimer This manuscript is submitted for publication with the understanding that the United States Government is authorized to reproduce and distribute reprints for Governmental purposes. Any use of trade, product, or firm names is for descriptive purposes only and does not imply endorsement by the U.S. government.

ORCID iDsJames B Callegary 10.1177_11786221211001768-img1.tif  https://orcid.org/0000-0003-3604-0517

Laura M Norman 10.1177_11786221211001768-img1.tif  https://orcid.org/0000-0002-3696-8406

Christopher J Eastoe 10.1177_11786221211001768-img1.tif  https://orcid.org/0000-0002-0661-7613

REFERENCES

1.

Mulvaney RL , Khan SA , Ellsworth TR. Synthetic nitrogen fertilizers deplete soil nitrogen: a global dilemma for sustainable cereal production. J Environ Qual. 2009;38:2295–2314. doi: https://doi.org/10.2134/jeq2008.0527. Google Scholar

2.

Lal R. Soil erosion and carbon dynamics. Soil Till Res. 2005;81:137–142. doi: https://doi.org/10.1016/j.still.2004.09.002. Google Scholar

3.

Scharlemann JP , Tanner EV , Hiederer R , Kapos V. Global soil carbon: understanding and managing the largest terrestrial carbon pool. Carbon Manag. 2014;5:81–91. doi: https://doi.org/10.4155/cmt.13.77. Google Scholar

4.

Jian M , Berhe AA , Berli M , Ghezzehei TA. Vulnerability of physically protected soil organic carbon to loss under low severity fires. Front Environ Sci. 2018;6:2018-2007. doi: https://doi.org/10.3389/fenvs.2018.00066. Google Scholar

5.

Homburg JA , Sandor JA , Lightfoot DR . Soil Investigations. In: Doolittle WE , Neely JA , , eds. The Safford Valley Grids, Prehistoric Cultivation the Southern Arizona Desert, Anthropological Paper No. 70. Tucson, AZ: University of Arizona Press; 2004:62–78. Google Scholar

6.

Abbasi NA , Xu X , Lucas-Borja ME , Dang W , Liu B. The use of check dams in watershed management projects: examples from around the world. Sci Total Environ. 2019;676:683–691. doi: https://doi.org/10.1016/J.SCITOTENV.2019.04.249. Google Scholar

7.

Piton G , Carladous S , Recking A , et al. Why do we build check dams in Alpine streams? An historical perspective from the French experience. Earth Surf Proc Land. 2017;42:91–108. doi: https://doi.org/10.1002/esp.3967. Google Scholar

8.

Debano LF , Schmidt LJ. Potential for enhancing riparian habitats in the southwestern United States with watershed practices. Forest Ecol Manag. 1990;33-34:385-403. doi: https://doi.org/10.1016/0378-1127(90)90205-P. Google Scholar

9.

Dahlke C , Bork H-R . Soil erosion and soil organic carbon storage on the Chinese loess plateau. In: Lal R , Lorenz K , Hüttl R , Schneider B , von Braun J , , eds. Recarbonization of the Biosphere. Dordrecht, The Netherlands: Springer; 2012:83–98. doi: https://doi.org/10.1007/978-94-007-4159-1_5. Google Scholar

10.

Robichaud PR , Rhee H , Lewis SA. A synthesis of post-fire burned area reports from 1972 to 2009 for western US Forest Service lands: trends in wildfire characteristics and post-fire stabilisation treatments and expenditures. Int J Wildland Fire. 2014;23:929–944. doi: https://doi.org/10.1071/WF13192. Google Scholar

11.

Bombino G , Tamburino V , Zema DA , Zimbone SM. The influence of check dams on fluvial processes and riparian vegetation in mountain reaches of torrents. J Agr Eng. 2010;41:37–47. doi: https://doi.org/10.4081/jae.2010.3.37. Google Scholar

12.

Wang Y , Chen L , Gao Y , Wang S , Lü Y , Fu B. Carbon sequestration function of check-dams: a case study of the Loess Plateau in China. Ambio. 2014;43:926–931. doi: https://doi.org/10.1007/s13280-014-0518-7. Google Scholar

13.

Pearson AJ , Pizzuto JE , Vargas R. Influence of run of river dams on floodplain sediments and carbon dynamics. Geoderma. 2016;272:51–63. doi: https://doi.org/10.1016/j.geoderma.2016.02.029. Google Scholar

14.

Santín C , Doerr SH , Kane ES , et al. Towards a global assessment of pyrogenic carbon from vegetation fires. Glob Change Biol. 2016;22:76–91. doi: https://doi.org/10.1111/gcb.12985. Google Scholar

15.

Bird MI , Wynn JG , Saiz G , Wurster CM , McBeath A. The pyrogenic carbon cycle. Annu Rev Earth Pl Sc. 2015;43:273–298. doi: https://doi.org/10.1146/annurev-earth-060614-105038. Google Scholar

16.

Abney RB , Berhe AA. Pyrogenic carbon erosion: implications for stock and persistence of pyrogenic carbon in soil. Front Earth Sci. 2018;6:2018-2003. doi: https://doi.org/10.3389/feart.2018.00026. Google Scholar

17.

Spencer CN , Odney GK , Hauer FR. Wildfire effects on stream food webs and nutrient dynamics in Glacier National Park, USA. Wildfire effects on stream food webs and nutrient dynamics in Glacier National Park, USA. Forest Ecol Manag. 2003;178:141–153. doi: https://doi.org/10.1016/S0378-1127(03)00058-6. Google Scholar

18.

Tecle A , Neary D. Water quality impacts of forest fires. J Pollut Effl Control. 2015;3:1–7. doi: https://doi.org/10.4172/2375-4397.1000140. Google Scholar

19.

Zhu Z , Reed BC. Baseline and projected future carbon storage and greenhouse-gas fluxes in ecosystems of the western United States: U.S. Geological Survey Professional Paper 1797.  http://pubs.usgs.gov/pp/1797/. Published 2012. Google Scholar

20.

Sankey JB , Kreitler J , Hawbaker TJ , et al. Climate, wildfire, and erosion ensemble foretells more sediment in western USA watersheds. Geophys Res Lett. 2017;44:8884–8892. Google Scholar

21.

United States Department of Agriculture Natural Resources Conservation Service. Soil Survey of Cochise County, Arizona, Douglas-Tombstone Part. Tucson, AZ: University of Arizona, Agricultural Experimental Station; 2003. Google Scholar

22.

Ascarza W. , The Chiricahua Mountains: History and Nature. Charleston, SC: Natural History Press; 2014. Google Scholar

23.

Falk DA , Heyerdahl EK , Brown PM , et al. Multi-scale controls of historical forest-fire regimes: new insights from fire-scar networks. Front Ecol Environ. 2011;9:446–454. doi: https://doi.org/10.1890/100052. Google Scholar

24.

Fleishman E , Belnap J , Cobb CAF , et al. Natural ecosystems. In: Garfin G , Jardine A , Merideth R , Black M , LeRoy S , , eds. Assessment of Climate Change in the Southwest United States: A Report Prepared for the National Climate Assessment. Washington, DC: Island Press; 2013:148–167. Google Scholar

25.

Falk DA . Are Madrean ecosystems approaching tipping points? Anticipating interactions of landscape disturbance and climate change. In: Gottfried GJ , Ffolliott PH , Gebow BS , Eskew LG , Collins LC , , eds. Merging Science and Management in a Rapidly Changing World: Biodiversity and Management of the Madrean Archipelago III and 7th Conference on Research and Resource Management in the Southwestern Deserts. Tucson, AZ: Department of Agriculture, Forest Service, Rocky Mountain Research Station; 2013:357–361. Google Scholar

26.

Youberg A , Neary DG , Koestner KA , Koestner PE , . Post-wildfire erosion in the Chiricahua Mountains. In: Gottfried GJ , Ffolliott PH , Gebow BS , Eskew LG , Collins LC , , eds. Merging Science and Management in a Rapidly Changing World: Biodiversity and Management of the Madrean Archipelago III and 7th Conference on Research and Resource Management in the Southwestern Deserts (Report RMRS-P-67). Tucson, AZ; Fort Collins, CO: U.S. Department of Agriculture, Forest Service, Rocky Mountain Research Station; 2013:357–361.  http://www.fs.fed.us/rm/pubs/rmrs_p067/rmrs_p067_357_361.pdfGoogle Scholar

27.

Hasselquist NJ , Germino MJ , Sankey JB , Ingram LJ , Glenn NF. Aeolian nutrient fluxes following wildfire in sagebrush steppe: implications for soil carbon storage. Biogeosciences. 2011;8:3649–3659. doi: https://doi.org/10.5194/bg-8-3649-2011. Google Scholar

28.

Sankey JB , Germino MJ , Sankey TT , Hoover AN. Fire effects on the spatial patterning of soil properties in sagebrush steppe, USA: a meta-analysis. Int J Wildland Fire. 2012;21:545–556. doi: https://doi.org/10.1071/WF11092. Google Scholar

29.

Robinne F-N , Miller C , Parisien M-A , et al. A global index for mapping the exposure of water resources to wildfire. Forests. 2016;7:22. doi: https://doi.org/10.3390/f7010022. Google Scholar

30.

Shakesby RA , Doerr SH. Wildfire as a hydrological and geomorphological agent. Earth-Sci Rev. 2006;74:269–307. doi: https://doi.org/10.1016/j.earscirev.2005.10.006. Google Scholar

31.

Miller ME , MacDonald LH , Robichaud PR , Elliot WJ. Predicting post-fire hillslope erosion in forest lands of the western United States. Int J Wildland Fire. 2011;20:982–999. doi: https://doi.org/10.1071/WF09142. Google Scholar

32.

Moody JA , Martin DA. Synthesis of sediment yields after wildland fire in different rainfall regimes in the western United States. Int J Wildland Fire. 2009;18:96. doi: https://doi.org/10.1071/WF07162. Google Scholar

33.

Smith HG , Sheridan GJ , Lane PNJ , Nyman P , Haydon S. Wildfire effects on water quality in forest catchments: a review with implications for water supply. J Hydrol. 2011;396:170–192. doi: https://doi.org/10.1016/j.jhydrol.2010.10.043. Google Scholar

34.

Sankey JB , Ravi S , Wallace CSA , Webb RH , Huxman TE . Quantifying soil surface change in degraded drylands: shrub encroachment and effects of fire and vegetation removal in a desert grassland [published online ahead of print June 15, 2012]. J Geophys Res Biogeosci. doi: https://doi.org/10.1029/2012JG002002. Google Scholar

35.

Hudak A , Morgan P , Stone C , Robichaud P , Jain T , Clark J. The relationship of field burn severity measures to satellite-derived Burned Area Reflectance Classification (BARC) maps. Paper presented at: American Society of Photogrammetry and Remote Sensing Annual Conference Proceedings.  https://www.fs.fed.us/rm/pubs_other/rmrs_2004_hudak_a003.pdf. Published 2004. Google Scholar

36.

Hudak AT , Morgan P , Bobbitt MJ , et al. The relationship of multispectral satellite imagery to immediate fire effects. Fire Ecol. 2007;3:64–90. doi: https://doi.org/10.4996/fireecology.0301064. Google Scholar

37.

United States Department of Agriculture Remote Sensing Applications Center. BAER Imagery Support Download. Final Soil Burn Severity Data. Home | Burned Area Emergency Response (BAER) Imagery Support (nwcg.gov). Published 2016. Google Scholar

38.

Beechie TJ , Sear DA , Olden JD , et al. Process-based principles for restoring river ecosystems. Bioscience. 2010;60:209–222. doi: https://doi.org/10.1525/bio.2010.60.3.7. Google Scholar

39.

Robichaud PR , Ashmun LE. Tools to aid post-wildfire assessment and erosion-mitigation treatment decisions. Int J Wildland Fire. 2013;22:95–105. doi: https://doi.org/10.1071/WF11162. Google Scholar

40.

Wang S , Zhang Z , McVicar TR , Zhang J , Zhu J , Guo J. An event-based approach to understanding the hydrological impacts of different land uses in semi-arid catchments. J Hydrol. 2012;416–417:50-59. doi: https://doi.org/10.1016/j.jhydrol.2011.11.035. Google Scholar

41.

Bernoux M , Bockel L , Rioux J , Tinlot M , Braimoh AK. Carbon sequestration as an integral part of watershed management strategies to address climate change issues.  http://www.fao.org/fileadmin/templates/ex_act/pdf/Policy_briefs/Carbon_watershed_management_July_2011.pdf. Published 2011. Google Scholar

42.

Hassanli AM , Beecham S. Criteria for optimizing check dam location and maintenance requirements. In: Cones-Garcia C , Aristide-Lenzi M , , eds. Check Dams, Morphological Adjustments and Erosion Control in Torrential Streams (pp. 11–31). Hauppauge, NY: Nova Science, Incorporated; 2013. Google Scholar

43.

Chen Z , Huang X , Yu S , Cao W , Dang W , Wang Y. Risk analysis for clustered check dams due to heavy rainfall. Int J Sediment Res. 2020;36:291–305. doi: https://doi.org/10.1016/j.ijsrc.2020.06.001. Google Scholar

44.

Lü Y , Sun R , Fu B , Wang Y. Carbon retention by check dams: regional scale estimation. Ecol Eng. 2012;44:139–146. doi: https://doi.org/10.1016/j.ecoleng.2012.03.020. Google Scholar

45.

Nadeu E , de Vente J , Martínez-Mena M , Boix-Fayos C. Exploring particle size distribution and organic carbon pools mobilized by different erosion processes at the catchment scale. J Soil Sediment. 2011;11:667–678. doi: https://doi.org/10.1007/s11368-011-0348-1. Google Scholar

46.

Koljonen S , Louhi P , Mäki-Petäys A , Huusko A , Muotka T. Quantifying the effects of in-stream habitat structure and discharge on leaf retention: implications for stream restoration. Freshw Sci. 2012;31:1121–1130. doi: https://doi.org/10.1899/11-173.1. Google Scholar

47.

Craig LS , Palmer MA , Richardson DC , et al. Stream restoration strategies for reducing river nitrogen loads. Front Ecol Environ. 2008;6:529–538. doi: https://doi.org/10.1890/070080. Google Scholar

48.

Filoso S , Palmer MA. Assessing stream restoration effectiveness at reducing nitrogen export to downstream waters. Ecol Appl. 2011;21:1989–2006. doi: https://doi.org/10.1890/10-0854.1. Google Scholar

49.

Newcomer Johnson TA , Kaushal SS , Mayer PM , Grese MM. Effects of stormwater management and stream restoration on watershed nitrogen retention. Biogeochemistry. 2014;121:81–106. doi: https://doi.org/10.1007/s10533-014-9999-5. Google Scholar

50.

Were D , Kansiime F , Fetahi T , Cooper A , Jjuuko C. Carbon sequestration by wetlands: a critical review of enhancement measures for climate change mitigation. Earth Syst Environ. 2019;3:327–340. doi: https://doi.org/10.1007/s41748-019-00094-0. Google Scholar

51.

Hudak AT , Robichaud PR , Evans J , et al. Field validation of burned area reflectance classification (BARC) products for post fire assessment. In: Greer JD , , ed. Tenth Forest Service Remote Sensing Applications Conference. Salt Lake City, UT; Bethesda, MD: American Society of Photogrammetry and Remote Sensing; 2004.  https://www.fs.fed.us/rm/pubs_other/rmrs_2004_hudak_a001.pdfGoogle Scholar

52.

Graham J . Chiricahua National Monument geologic resources inventory report. Chiricahua National Monument Geologic Resources Inventory Report (nps.gov). Natural Resource Report NPS/NRPC/GRD/NRR—2009/081. Published 2009. Google Scholar

53.

Drewes H. , Tectonic Map of Southeast Arizona. Reston, VA: U.S. Geological Survey Miscellaneous Investigations Series Map I-1109; 1979. doi: https://doi.org/10.3133/OFR79775. Google Scholar

54.

Fuller JE . Cochise county ALERT system. Cochise County ALERT System • JE Fuller  http://jefullerdata.com/Cochise/index1h.html. Published 2013. Google Scholar

55.

AZFireScape. Ecological systems map—Chiricahua-Dragoons-Dos Cabezas.  https://www.azfirescape.org/chiricahua-dragoons-dos-cabezas. Published 2010. Google Scholar

56.

Norman LM , Niraula R. Model analysis of check dam impacts on long-term sediment and water budgets in Southeast Arizona, USA. Ecohydrol Hydrobiol. 2016;16:125–137. doi: https://doi.org/10.1016/j.ecohyd.2015.12.001. Google Scholar

57.

Datry T , Corti R , Foulquier A , von Schiller D , Tockner K. One for all, all for one: a global river research network. Eos. 2016;97:13–15. doi: https://doi.org/10.1029/2016EO053587. Google Scholar

58.

Acuña V , Datry T , Marshall J , et al. Why should we care about temporary waterways? Science. 2014;343:1080–1081. doi: https://doi.org/10.1126/science.1246666. Google Scholar

59.

Norman LMM , Brinkerhoff F , Gwilliam E , et al. Hydrologic response of streams restored with check dams in the Chiricahua Mountains, Arizona. River Res Appl. 2015;32:519–527. doi: https://doi.org/10.1002/rra.2895. Google Scholar

60.

Soil Survey Staff NRCS USDA. Web soil survey.  http://websoilsurvey.nrcs.usda.gov/. Published 2018. Google Scholar

61.

Wynn JG , Bird MI. Environmental controls on the stable carbon isotopic composition of soil organic carbon: implications for modelling the distribution of C3 and C4 plants, Australia. Tellus B: Chem Phys Meteorol B. 2008;60:604–621. doi: https://doi.org/10.1111/j.1600-0889.2008.00361.x. Google Scholar

62.

Teeri JA , Stowe LG. Climate patterns and the distribution of C4 grasses in North America. Oecologia. 1976;23:1–12. Google Scholar

63.

Kohn MJ. Carbon isotope compositions of terrestrial C3 plants as indicators of (paleo)ecology and (paleo)climate. Proc Natl Acad Sci USA. 2010;107:19691–19695. doi: https://doi.org/10.1073/pnas.1004933107. Google Scholar

64.

Ehleringer JR , Buchmann N , Flanagan LB. Carbon isotope ratios in belowground carbon cycle processes. Ecol Appl. 2000;10:412–422. doi: https://doi.org/10.1890/1051-0761(2000)010[0412. Google Scholar

65.

Staddon PL. Carbon isotopes in functional soil ecology. Trends Ecol Evol. 2004;19:148–154. doi: https://doi.org/10.1016/j.tree.2003.12.003. Google Scholar

66.

Wynn JG , Bird MI. C4-derived soil organic carbon decomposes faster than its C3 counterpart in mixed C3/C4 soils. Glob Change Biol. 2007;13:2206–2217. doi: https://doi.org/10.1111/j.1365-2486.2007.01435.x. Google Scholar

67.

Natelhoffer KJ , Fry AB. Controls on natural nitrogen-15 and carbon-13 abundances in forest soil organic matter. Soil Sci Soc Am J. 1988;52:1633–1640. Google Scholar

68.

Preston CM , Trofymow JA , Flanagan LB . Decomposition, δ13C, and the “lignin paradox.” Can J Soil Sci. 2006;86:235–245. doi: https://doi.org/10.4141/S05-090. Google Scholar

69.

Benner R , Fogel ML , Sprague EK , Hodson RE. Depletion of 13C in lignin and its implications for stable carbon isotope studies. Nature. 1987;329:708–710. doi: https://doi.org/10.1038/329708a0. Google Scholar

70.

Reid CP , Woods FW. Atmospheric transfer of carbon-14: a problem in fungus translocation studies. Science. 1967;157:712–713. doi: https://doi.org/10.1126/SCIENCE.157.3789.712. Google Scholar

71.

Eastoe C , Toolin L. A multi-century δ13C record of the C4 grass Setaria macrostachya in the US Southwest: identifying environmental causes of variability. Palaeogeogr Palaeocl. 2018;489:129–136. doi: https://doi.org/10.1016/J.PALAEO.2017.10.004. Google Scholar

72.

White JWC , Vaughn BH , Michel SE . Stable isotopic composition of atmospheric carbon dioxide (13C and 18O) from the NOAA ESRL carbon cycle cooperative global air sampling network. 1990–2014, Version: 2015-10-26. ftp://aftp.cmdl.noaa.gov/data/trace_gases/co2c13/flask/. Published 2015. Google Scholar

73.

Rubino M , Etheridge DM , Trudinger CM , et al. A revised 1000 year atmospheric δ13C-CO2 record from Law Dome and South Pole, Antarctica. J Geophys Res-Atmos. 2013;118:8482–8499. doi: https://doi.org/10.1002/jgrd.50668. Google Scholar

74.

Keeling CD. The Suess effect: 13Carbon-14Carbon interrelations. Environ Int. 1979;2:229–300. doi: https://doi.org/10.1016/0160-4120(79)90005-9. Google Scholar

75.

Saiz G , Wynn JG , Wurster CM , Goodrick I , Nelson PN , Bird MI. Pyrogenic carbon from tropical savanna burning: production and stable isotope composition. Biogeosciences. 2015;12:1849–1863. doi: https://doi.org/10.5194/bg12-1849-2015. Google Scholar

76.

Krull E , Skjemstad J , Graetz D , et al. 13C-depleted charcoal from C4 grasses and the role of occluded carbon in phytoliths. Org Geochem. 2003;34:1337–1352. doi: https://doi.org/10.1016/S0146-6380(03)00100-1. Google Scholar

77.

Das O , Wang Y , Hsieh Y-P. Chemical and carbon isotopic characteristics of ash and smoke derived from burning of C3 and C4 grasses. Org Geochem. 2010;41:263–269. doi: https://doi.org/10.1016/j.orggeochem.2009.11.001. Google Scholar

78.

Czimczik CI , Preston CM , Schmidt MWI , Werner RA , Schulze ED . Effects of charring on mass, organic carbon, and stable carbon isotope composition of wood. Org Geochem. 2002;33:1207–1223. doi: https://doi.org/10.1016/S0146-6380(02)00137-7. Google Scholar

79.

Saiz G , Goodrick I , Wurster C , Nelson PN , Wynn J , Bird M. Preferential production and transport of grass-derived pyrogenic carbon in NE-Australian savanna ecosystems. Front Earth Sci. 2018;5:115. doi: https://doi.org/10.3389/feart.2017.00115. Google Scholar

80.

Kramer MG , Sollins P , Sletten RS , Swart PK. N isotope fractionation and measures of organic matter alteration during decomposition. Ecology. 2003;84:2021–2025. doi: https://doi.org/10.1890/02-3097. Google Scholar

81.

Kramer MG , Lajtha K , Aufdenkampe AK. Depth trends of soil organic matter C:N and 15N natural abundance controlled by association with minerals. Biogeochemistry. 2017;136:237–248. doi: https://doi.org/10.1007/s10533-017-0378-x. Google Scholar

82.

Dijkstra P , LaViolette CM , Coyle JS , et al. 15N enrichment as an integrator of the effects of C and N on microbial metabolism and ecosystem function. Ecol Lett. 2008;11:389–397. doi: https://doi.org/10.1111/j.1461-0248.2008.01154.x. Google Scholar

83.

Pyle LA , Hockaday WC , Boutton T , Zygourakis K , Kinney TJ , Masiello CA. Chemical and isotopic thresholds in charring: implications for the interpretation of charcoal mass and isotopic data. Environ Sci Technol. 2015;49:14057–14064. doi: https://doi.org/10.1021/acs.est.5b03087. Google Scholar

84.

Bai E , Boutton TW , Liu F , Wu XB , Archer SR. N isoscapes in a subtropical savanna parkland: spatial-temporal perspectives. Ecosphere (Washington, DC). 2013;4:1–17. doi: https://doi.org/10.1890/ES12-00187.1. Google Scholar

85.

Bogomolny A. Volume of an elliptic paraboloid. Interactive mathematics miscellany and puzzles.  http://www.cut-the-knot.org/Generalization/Cavalieri4.shtml. Published 2018. Google Scholar

86.

Nelson DW , Sommers LE . Total carbon, organic carbon, and organic matter. In: Sparks DL , , ed. Methods of Soil Analysis. Part 3: Chemical Methods (SSSA book series no. 5). Madison, WI: Soil Science Society of America; 1996:961–1010. Google Scholar

87.

Cihacek LJ , Jacobson KA. Effects of soil sample grinding intensity on carbon determination by high-temperature combustion. Commun Soil Sci Plan. 2007;38:1733–1739. doi: https://doi.org/10.1080/00103620701435506. Google Scholar

88.

Helsel DR. , Statistics for Censored Environmental Data Using Minitab and R. Hoboken, NJ: John Wiley & Sons, Inc; 2012. Google Scholar

89.

U.S. Geological Survey. National water information system—web Interface. doi: https://doi.org/10.5066/F7P55KJN. Published 2018. Google Scholar

90.

R-Core-Team. R: A Language and Environment for Statistical Computing.  https://www.r-project.org/. Published 2015. Google Scholar

91.

Lee L. Nondetects and data analysis for environmental data (R package, version 1.6-1).  https://cran.r-project.org/web/packages/NADA/index.html. Published 2017. Google Scholar

92.

Singh A , Singh AK. , ProUCL.  https://www.epa.gov/land-research/proucl-software. Published 2016. Google Scholar

93.

Pollock MM , Beechie TJ , Wheaton JM , et al. Using beaver dams to restore incised stream ecosystems. Bioscience. 2014;64:279–290. doi: https://doi.org/10.1093/biosci/biu036. Google Scholar

94.

Pollock MM , Beechie TJ , Jordan CE. Geomorphic changes upstream of beaver dams in Bridge Creek, an incised stream channel in the interior Columbia River basin, eastern Oregon. Earth Surf Proc Land. 2007;32:1174–1185. doi: https://doi.org/10.1002/esp.1553. Google Scholar

95.

Ponce VM , Lindquist DS. Management of baseflow augmentation: a review. J Am Water Resour As. 1990;26:259–268. doi: https://doi.org/10.1111/j.1752-1688.1990.tb01369.x. Google Scholar

96.

Pollock MM , Heim M , Werner D. Hydrologic and geomorphic effects of beaver dams and their influence on fishes. Am Fish Soc Symp. 2003;37:213–233.  https://doi.org/10.47886/9781888569568 Google Scholar

97.

Homer CG , Dewitz JA , Yang L , et al. Completion of the 2011 National Land Cover Database for the conterminous United States-representing a decade of land cover change information. Photogramm Eng Rem S. 2015;81:345–354. Google Scholar

98.

Knops JMH , Bradley KL , Wedin DA . Mechanisms of plant species impacts on ecosystem nitrogen cycling. Ecol Lett. 2002;5:454–466. doi: https://doi.org/10.1046/j.1461-0248.2002.00332.x. Google Scholar

99.

Sokolov AP , Kicklighter DW , Melillo JM , Felzer BS , Schlosser CA , Cronin TW. Consequences of considering carbon–nitrogen interactions on the feedbacks between climate and the terrestrial carbon cycle. J Climate. 2008;21:3776–3796. doi: https://doi.org/10.1175/2008JCLI2038.1. Google Scholar

100.

Petterson RC . The chemical composition of wood. In: Rowell R , , ed. The Chemistry of Solid Wood (Advances in Chemistry 207). Washington, DC: American Chemical Society; 1984:57–126. Google Scholar

101.

Bruun EW , Ambus P , Egsgaard H , Hauggaard-Nielsen H. Effects of slow and fast pyrolysis biochar on soil C and N turnover dynamics. Soil Biol Biochem. 2012;46:73–79. doi: https://doi.org/10.1016/j.soilbio.2011.11.019. Google Scholar

102.

Cerling TE , Solomon DK , Quade J , Bowman JR . On the isotopic composition of carbon in soil carbon dioxide. Geochim Cosmochim Acta. 1991;55:3403–3405. doi: https://doi.org/10.1016/0016-7037(91)90498-T. Google Scholar

103.

Dijkstra P , Ishizu A , Doucett R , et al. 13C and 15N natural abundance of the soil microbial biomass. Soil Biol Biochem. 2006;38:3257–3266. doi: https://doi.org/10.1016/J.SOILBIO.2006.04.005. Google Scholar

104.

Liao JD , Boutton TW , Jastrow JD. Organic matter turnover in soil physical fractions following woody plant invasion of grassland: evidence from natural 13C and 15N. Soil Biol Biochem. 2006;38:3197–3210. doi: https://doi.org/10.1016/j.soilbio.2006.04.004. Google Scholar

105.

Merbt SN , Proia L , Prosser JI , Martí E , Casamayor EO , von Schiller D. Stream drying drives microbial ammonia oxidation and first-flush nitrate export. Ecology. 2016;97:2192–2198. doi: https://doi.org/10.1002/ecy.1486. Google Scholar

106.

Hobbie EA , Macko SA , Shugart HH. Interpretation of nitrogen isotope signatures using the NIFTE model. Oecologia. 1999;120:405–415. doi: https://doi.org/10.1007/s004420050873. Google Scholar

107.

Jones MW , Santín C , van der Werf GR , Doerr SH. Global fire emissions buffered by the production of pyrogenic carbon. Nat Geosci. 2019;12:742–747. doi: https://doi.org/10.1038/s41561-019-0403-x. Google Scholar

108.

Jenkins WA , Murray BC , Kramer RA , Faulkner SP. Valuing ecosystem services from wetlands restoration in the Mississippi Alluvial Valley. Ecol Econ. 2010;69:1051–1061. doi: https://doi.org/10.1016/j.ecolecon.2009.11.022. Google Scholar

109.

Huntington TG . Available water capacity and soil organic matter. In: Lal R , , ed. Encyclopedia of Soil Science. New York, NY: CRC Press; 2016:1–5. Google Scholar

110.

Pan Y , Birdsey RA , Fang J , et al. A large and persistent carbon sink in the world’s forests. Science. 2011;333:988–993. doi: https://doi.org/10.1126/science.1201609. Google Scholar

111.

Oelkers EH , Cole DR. Carbon dioxide sequestration a solution to a global problem. Elements. 2008;4:305–310. doi: https://doi.org/10.2113/gselements.4.5.305. Google Scholar

112.

Pretty JL , Dobson M. Leaf transport and retention in a high gradient stream. Hydrol Earth Syst Sci. 2004;8:560–566. doi: https://doi.org/10.5194/hess-8-560-2004. Google Scholar

113.

Spänhoff B , Meyer EI. Breakdown rates of wood in streams. J N Am Benthol Soc. 2004;23:189–197. doi: https://doi.org/10.1899/0887-3593(2004)023<0189. Google Scholar

114.

Naiman RJ , Balian EV , Bartz KK , Bilby RE , Latterell JJ . Dead wood dynamics in stream ecosystems: general technical report PSW-GTR-181. In: Laudenslayer WF , Jr, Shea PJ , Valentine BE , Weatherspoon CP , Lisle TE , eds. Proceedings of the Symposium on the Ecology and Management of Dead Wood in Western Forests. Albany, CA: Pacific Southwest Research Station; 2002:23–48. doi: https://doi.org/10.2737/PSW-GTR-181. Google Scholar

115.

Powell K , Pedley S , Daniel G , Corfield M. Ultrastructural observations of microbial succession and decay of wood buried at a Bronze Age archaeological site. Int biodeter biodegr. 2001;47:165–173. doi: https://doi.org/10.1016/S0964-8305(01)00045-2. Google Scholar
© The Author(s) 2021 This article is distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 License (https://creativecommons.org/licenses/by-nc/4.0/) which permits non-commercial use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access page (https://us.sagepub.com/en-us/nam/open-access-at-sage).
James B Callegary, Laura M Norman, Christopher J Eastoe, Joel B Sankey, and Ann Youberg "Preliminary Assessment of Carbon and Nitrogen Sequestration Potential of Wildfire-Derived Sediments Stored by Erosion Control Structures in Forest Ecosystems, Southwest USA," Air, Soil and Water Research 14(1), (23 April 2021). https://doi.org/10.1177/11786221211001768
Received: 2 February 2021; Accepted: 19 February 2021; Published: 23 April 2021
KEYWORDS
C/N
carbon sequestration
ephemeral and intermittent streams
fluvents
Inceptisols
Mollisols
nitrogen sequestration
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