Open Access
How to translate text using browser tools
15 August 2019 Regional Variations in Vegetation Patterns on Landslides in the Snowy Mountains of Central Japan
Sadao Takaoka
Author Affiliations +
Abstract

Landslides have emerged as one of the most important disturbance agents in mountainous ecosystems. In mountainous regions in Japan, the locations of old landslides often have heterogeneous vegetation that is peculiar to landslide areas. However, little is known about how and why vegetation patterns differ among landslide sites within a region. In this study, I describe the variations in vegetation at different landslide sites within a region and examine the possible causes of the regional diversity of vegetation at these sites. I classified the vegetation on 1703 landslides by interpreting aerial photos of the 1421 km2 study region. Nine types of vegetation were classified. The results show that the heterogeneity of the vegetation increased with the maximum snow depth, and the number of vegetation types on landslide bodies increased with latitude and altitude. Among the 1703 landslides studied herein, 62 included mires (wetlands). Sites with mires were concentrated in areas with heavy snowfall and certain lithologies, such as ultramafic rocks and nonalkaline mafic volcanic rocks. My analysis using Random Forest, a machine-learning algorithm, indicates that maximum snow depth and summer temperatures had the greatest impact on the number of vegetation types and mires on the landslide bodies. The results of this study suggest that snowy conditions have long-term effects on vegetation structure and diversity on old landslide sites.

Introduction

In recent years, landslides have emerged as one of the most important disturbance agents in mountainous ecosystems, especially in humid tropical regions (Restrepo et al 2009; Walker and Shiels 2013). A landslide results in heterogeneous vegetation (Parker and Bendix 1996). One of the causes of this heterogeneity is the different stages of plant succession that follow disturbances by landslides. Spatial variations in plant succession have been found both within landslide sites (Myster and Fernández 1995; Walker et al 1996; Velázquez and Gómez-Sal 2008) and among landslide sites in a region (Miles and Swanson 1986; Myster et al 1997; Shiels et al 2008; Elias and Dias 2009). Most previous studies have focused on the initial stages of plant succession over a few years or decades after a landslide had occurred. Such heterogeneity within landslides can change or disappear gradually over the course of long-term ecological succession.

However, a variety of vegetation types can be observed on landslide scars, even if the landslide occurred several hundred or thousands of years ago (Takahashi 1990; Kariya et al 2013). This implies that the heterogeneity of the vegetation was not exclusively due to differences between successional stages, but also to spatial variations in environmental conditions within the landslide site. Large-scale landslides create heterogeneous environments related to micro-landforms within the landslide scar, such as unstable steep scarps, mesic depressions, dry hills, and well-drained boulder fields (Hamasaki and Miyagi 2018). Past studies have reported that these micro-environments affect vegetation patterns within the sites of old landslides (Mishima et al 2009; Kariya et al 2013; Sasaki and Sugai 2015).

It is essential to consider landslides when trying to understand the patterns and processes of vegetation dynamics in Japanese mountains, where heavy rains and earthquakes cause frequent landslides (Yoshimatsu and Abe 2006). Previous studies conducted in mountainous regions of Japan have clarified the relationships between vegetation patterns and conditions at the sites of both old (Koizumi 1999; Mishima et al 2009) and recent landslides (Nakashizuka et al 1993). However, little is known about how and why vegetation patterns vary between landslide sites in a region. Heterogeneous vegetation on old landslide scars, as exemplified in the landslide site shown in Figure 1, does not occur on all sites; some old landslide sites are covered in homogeneous forest vegetation (Takaoka 2013). It seems that some landslides have long-term effects on vegetation, and others do not. This implies that regional environmental conditions, such as climate and geology, affect the development of vegetation after landslides.

FIGURE 1

Vegetation mosaics at the site of an old landslide on Mount Happo, central Japan. A view of landslide bodies from the upper edge of a main scarp. Bf, broadleaved forest; Cf, coniferous forest; Pn, pond; Md, meadow; Mr, mire; Rf, rubble field; Sg, Sasa grassland; Sh, shrub. (Photo by Sadao Takaoka)

img-z2-2_R33.jpg

The objectives of this study were to describe the variations in vegetation among different landslide locations within a region, and to examine possible causes of the regional diversity of vegetation on landslides. No previous studies have been conducted over an area large enough to determine fully the effects of regional climatic conditions on variations in vegetation patterns at the sites of landslides. Thus, I set the study area such that regional differences in air temperature and snowfall could be taken into consideration. Such understanding of regional variations is useful as basic knowledge for conservation and sustainable management of landslide-prone ecosystems.

Study area

This study was conducted in a 1421 km2 region of Hida Mountain Range, central Japan. The region encompasses a wide variety of climatic conditions, geological formations, and vegetation types. Most parts of the study region are bounded by a 1000 m contour line, although the south and southwestern parts are bounded by rivers, as shown in Figure 2A.

FIGURE 2

Study area. (A) Shaded relief map based on a 10 m digital elevation model provided by the Geospatial Information Authority of Japan. (B) Thirty year average values (1981–2010) of maximum snow depths obtained from the Mesh Climate Data 2010 dataset (Japan Meteorological Agency 2012). (C) Landslide bodies based on the landslide map published by the National Research Institute for Earth Science and Disaster Prevention (2013). (Maps by Sadao Takaoka)

img-z3-2_R33.jpg

According to the Mesh Climate Data 2010 (Japan Meteorological Agency 2012), average summer temperatures (July to September) range from 9.7°C (2603 masl) to 20.4°C (1094 masl). The maximum annual average snow depth is over 200 cm in the snowiest area of the study region; snowfall decreases toward the south (Figure 2B).

Some mountains in the study region are Middle Pleistocene to Holocene volcanoes; others were formed by uplifts during the Quaternary and consist of Paleozoic to Mesozoic sedimentary rocks, Cretaceous granitic rocks, and Paleozoic to Mesozoic metamorphic rocks (Geological Survey of Japan 2009).

The mountain slopes are mainly covered with forests. The subalpine zone (∼1600–2500 m) is dominated by Abies mariesii, Abies veitchii, Tsuga diversifolia, and Betula ermanii, while the montane zone (∼700–1600 m) is covered by broadleaved forests that are dominated by Fagus crenata, Tilia japonica, and Abies homolepis. B. ermanii forests form in the topmost parts of the subalpine zone in some areas (Okitsu 1991). Alpine vegetation, mainly composed of Pinus pumila shrub and alpine meadows, occurs in the area above the forest limit. The forest limit occurs at around 2500 m, although prolonged snow cover causes the descent of this limit by 800 to 1000 m in the northern area of the study region (Gansert 2004).

A geographical information system (GIS)-based landslide map has been published by the National Research Institute for Earth Science and Disaster Prevention (NIED) ( http://www.j-shis.bosai.go.jp/map/). This map shows the distribution of large landslides (ie with widths of at least 150 m). The study region contained 1703 landslide polygons in total, representing landslide bodies referred to as “moved or moving masses” by NIED (Figure 2C). The combined area of the landslide bodies represented 13.9% of the study region.

None of the landslides studied was newly created; no major changes in landforms or vegetation were observed when comparing the most recent aerial photographs to those taken in 1976–1977, except for landslide sites where afforestation or deforestation had taken place. Minor changes that may be due to reactivation or erosion were observed within some of the landslide bodies. Most seemed dormant and very old, although their numerical age is not known. Based on the geomorphological features, most landslides belonged to the relative age class (McCalpin 1984) of inactive young (100–5000 years) or inactive mature (5000–10,000 years). Radiocarbon ages obtained from landslide sites in and around the study area range from 1383 to 8916 years (Kariya et al 2013).

Methods

Vegetation classification

The target landforms for vegetation analyses were landslide bodies, which are landforms made of materials displaced by landslides. I extracted all the polygons of landslide bodies from the landslide map published by NIED and classified the vegetation in the landslide polygons by interpreting aerial photos taken by the Geospatial Information Authority of Japan during the period 2000–2006.

I classified nine types of vegetation in areas covered by more than 100 m2 of vegetation. The vegetation classification was carried out by stereoscopic air-photo interpretation, based on color and texture of the image, relative vegetation height, and tree canopy size. The types included broadleaved forest, coniferous forest, shrub, Sasa grassland, meadow, mire (bog and fen), pond, rubble field, and artificial vegetation. Sasa grasslands are dominated by Sasa species, including Sasa pygmaea, Sasa senanensis, and Sasa kurilensis. It is essential to consider ponds when analyzing biodiversity in mountainous areas (Takaoka 2015); therefore even ponds with areas smaller than 100 m2 were recorded.

The nine types are representative of the vegetation in the region. I considered the number of vegetation types in each landslide polygon as an indicator of vegetation heterogeneity.

Spatial analysis

I employed the Random Forest algorithm for spatial analysis. Random Forest is a nonparametric machine-learning technique developed by Breiman (2001) to predict and assess the relationships between a predictor and a response variable. I carried out a Random Forest analysis to identify predictors of vegetation diversity on landslide bodies and ranked these by importance. Predictors included terrain variables (slope and aspect), climate variables (temperature, rainfall, and snowfall), and the lithology of bedrocks.

I used a 10 m digital elevation model provided by the Geospatial Information Authority of Japan to produce maps of slopes and aspects using GIS (TNTmips, MicroImages, Inc). The aspect was translated into a continuous north–south gradient (northness) using the following equation: northness = cosine (aspect). The terrain variables were calculated as the means of each of the 10 × 10 m cells making up each landslide polygon.

The 30 year average values (1981–2010) of the climate variables were obtained from the Mesh Climate Data 2010 dataset. The average summer temperature (July to September), total summer rainfall (July to September), and maximum snow depth were used as climate variables for each polygon.

The lithology of each polygon was defined as the most dominant lithology in that polygon, according to a geological map at a scale of 1:200,000 (Geological Survey of Japan 2009). The lithology was transformed into a dummy variable (numeric variable).

The response variables were coded as the four classes of vegetation occupying the largest area in each landslide polygon. These classes were forest, shrub, Sasa grassland, and meadow (Table 1, dataset 1). Mire, pond, and rubble fields were not included because they did not occupy the largest area of any polygon. I combined coniferous and broadleaved forests into one class, denoted forest. Polygons that had been artificially vegetated were excluded from the analysis.

TABLE 1

Datasets used for the Random Forest analysis.

img-z4-2_R33.gif

A Random Forest analysis was also conducted to identify predictors of mires on landslide bodies (Table 1, dataset 2). A mountain mire, which is occasionally observed in landslide landforms, is an important element in mountain landscapes because it often provides regional refugia for rare species (Chimner et al 2010). The predictors were the same as those used in the analysis of dataset 1.

The datasets were not balanced for the different response classes (Table 1). I addressed the issue of unbalanced data by applying the synthetic minority oversampling technique (SMOTE; Chawla et al 2002) to generate synthetic calibration samples for the minority classes.

I simulated the Random Forest models using the randomForest package (Liaw and Wiener 2002) in R (ver. 3.3.2; R Core Team 2016). The datasets were balanced using the SMOTE algorithm from the DMwR package in R (Torgo 2010). As part of the Random Forest procedure, 500 classification trees were built for each dataset.

Results

Vegetation on landslide bodies

The distributions of the most dominant vegetation types in each landslide-body polygon are shown in Figure 3A. In 176 of the 1703 polygons in the study region, the natural vegetation had been replaced by artificial forests and artificial meadows. The other polygons were covered with natural vegetation, although some of them seem to have been affected by past human influence. Deciduous broadleaved forests were dominant at elevations below ∼1700 m. Coniferous forests occupied most of the area above ∼1500 m in the southern part of the study area, while shrubs, Sasa grasslands, and meadows were dominant at the same elevations in the northern part of the region. Deciduous broadleaved forests occurred at elevations above 2000 m. These were dominated by B. ermanii, which was often mixed with coniferous trees in subalpine forests.

FIGURE 3

(A) Distribution of the most dominant vegetation. (B) Number of vegetation types. (C) Maximum snow depth. The centroids of the polygons are plotted.

img-z5-2_R33.jpg

The heterogeneity of the vegetation increased with the maximum snow depth. Landslide polygons with more types of vegetation were dominant in areas with greater maximum snow depths. Specifically, the number of vegetation types within polygons increased with the latitude and elevation (Figure 3B), as did maximum snow depth (Figure 3C). In areas with maximum snow depths of 50–100 cm, 59.8% of polygons were occupied by one type of vegetation (Figure 4). This percentage decreased as the maximum snow depth increased; only 13.8% of polygons were covered by one type of vegetation in areas where the snow depth was 200 cm or more.

FIGURE 4

Diversity of vegetation with respect to snow-depth class.

img-z6-8_R33.jpg

In total, 546 (35.8%) of the landslide polygons were occupied by one type of vegetation. These polygons included 385 broadleaved forests (70.5%), 85 coniferous forests (15.6%), and 73 shrublands (13.4%) (Table 2). The occurrence of shrubs, Sasa grasslands, and meadows contributed to the increase in the number of vegetation types within polygons, and the occurrence of mires, ponds, and rubble fields increased this number further.

TABLE 2

Distribution of vegetation types within landslide polygons.

img-z6-2_R33.gif

Distribution of mountain mires

Of the 1703 landslide polygons studied, 62 included mires, as shown in Figure 5. These polygons contained 285 mires (Table 3). The areas of the mires were between 101.2 and 20,982.3 m2; 80.7% of them were smaller than 2000 m2.

FIGURE 5

Distribution of landslide bodies with mires. The centroids of the polygons are plotted.

img-z7-2_R33.jpg

TABLE 3

Size distribution of mires.

img-z6-12_R33.gif

The landslide polygons that contained mires occurred at elevations greater than 1455 m and at latitudes north of 36.6°N (Figure 5). This area overlapped with the region of heavy snowfall, as shown in Figure 3C. The polygons that contained mires also seemed to be concentrated in areas of certain lithologies, such as ultramafic rocks and nonalkaline mafic volcanic rocks (Table 4). Mires occurred twice as often as expected in ultramafic rocks and nonalkaline mafic volcanic rocks, while there were no mires in areas with sandstone and granite rocks.

TABLE 4

Number of observed and expected mires in areas with different types of bedrock. Only rocks that occurred in 100 or more landslide-body polygons are shown.

img-z7-8_R33.gif

Importance of variables

The mean decrease in the Gini coefficient, which was calculated using Random Forest analysis, provided an estimate of the degree to which a variable reduced the variability between landslide polygons. Higher values of the mean decrease in the Gini coefficient indicate a more important variable. The results indicate that both the diversity of vegetation and occurrence of mires were mainly predicted by three common variables: summer temperatures, maximum snow depth, and lithology. Based on the mean decrease in the Gini coefficient (Table 5), summer temperatures were the most important variable determining vegetation diversity, and maximum snow depth was the second most important variable. On the other hand, maximum snow depth was almost as important as summer temperatures with respect to the occurrence of mires.

TABLE 5

Importance of variables according to the mean decrease in the Gini coefficient for each variable.

img-z8-2_R33.gif

Discussion

The dominant vegetation in landslide-body polygons varied with elevation; broadleaved forests dominated at elevations below 1700 m, while coniferous forests occupied areas above 1500 m (although shrubs, Sasa grasslands, and meadows were dominant, rather than coniferous forests, in the northern part of the region; Figure 3A). On the whole, this distribution pattern resembled that of the mature vegetation in the region (Ozeki 2001; Gansert 2004). I considered the locations of large-scale landslides characterized in this study to be old enough to contain mature vegetation. However, the vegetation at landslide sites was not exactly the same as undisturbed mature vegetation, as described below.

The number of vegetation types in landslide polygons varied among study areas (Figure 3B). The results of my Random Forest analysis suggest that summer temperatures and maximum snow depth are the most important variables determining the diversity of vegetation (Table 5). The occurrence of nonforest vegetation, including shrubs, Sasa grasslands, and meadows, contributed to an increased number of vegetation types within the landslide polygons (Table 2). This implies that the increase in the number of vegetation types was partly due to the landslide polygons overlapping the alpine zone, where nonforest vegetation was dominant. However, nonforest vegetation frequently occurred in polygons in subalpine zones in the snowy part of the study region (Figure 3A). The growth and establishment of subalpine coniferous trees are reported to be affected by heavy snow accumulation (Takaoka 1999; Kajimoto et al 2002). Within the landslide bodies studied, nonforest vegetation was observed both in depressions, where snow patches develop and reduce the length of the growing season, and on steep slopes, where the snow creep caused by snow patches causes mechanical damage to trees. These observations suggest that snowy conditions hindered ecological succession and maintained the effects of past landslides on vegetation, even when the landslides occurred a long time ago.

Rubble fields also contributed to the richness of vegetation types (Table 2) and were often observed on slopes around long-lived and perennial snow patches that shortened the length of the growing season (Iwata 1983). This indicates that snowy conditions contributed to the development of rubble fields on landslide bodies, increasing the diversity of vegetation types.

Mires and ponds, which were also associated with an increase in the number of vegetation types in landslide-body polygons, also appeared to be influenced by snowy conditions and micro-landforms within landslide bodies. These wetlands occur in depressions in landslide bodies (Kariya et al 2013; Takaoka 2015) where the depressions collect rainwater and snowmelt. The results of my Random Forest analysis suggest that maximum snow depth and summer temperature are important variables with respect to the development of mires (Table 5). This implies that a supply of snowmelt water and suppression of evapotranspiration by lower than usual summer temperatures help to maintain mires. Most of the mires in the landslide bodies were small, but there were many of them (Table 3). This population of small-scale mires may play an important role in maintaining the biodiversity of mountainous regions, as it does in lowland regions (Blackwell and Pilgrim 2011).

According to the Random Forest analysis, the lithology was the third most important variable determining mire occurrence (Table 5). In general, differences in lithology lead to regional differences in weathering and geomorphic processes, causing regional differences in the frequency of wetland occurrence. A certain kind of wetland commonly forms in ultramafic outcrops (Kruckeberg 2004: 220–221). In the present study region, landslide bodies containing mires were frequently formed in areas of ultramafic rock. Further research is necessary to elucidate the relationship between lithology and mire development on landslide bodies in detail.

Vegetation succession in a landslide site is hierarchically influenced by regional, local, and microsite conditions (Walker and Shiels 2013). The findings of the present study clarified the effects of regional conditions, about which little has been known. The findings suggest that the regional conditions direct the function of local conditions (ie landform effects inside a landslide site), although additional studies are needed to quantify the linkage.

Conclusions

This study demonstrates that variations in vegetation among the sites of landslides in the region studied were caused by maximum snow depth, summer temperatures, and lithological conditions. In the snowier parts of the region, snow had a greater effect on the development of vegetation at the sites of landslides. This was probably because the presence of snow reduces the growing season, and snow creep causes pressure on specific micro-landforms within landslide bodies. I also showed that snowy conditions maintained the effects of landslides, even when the landslides occurred a long time ago. These observations suggest that snowy conditions have long-term effects on vegetation structure and diversity at landslide sites. Differences in lithology contributed to regional differences in hydrological conditions, which are determined by the micro-landforms and weathered materials that are present in landslide bodies. Thus, these differences were associated with larger varieties of vegetation types.

Previous studies have failed to detect the effects of snow on landslide ecosystems from a broad-scale perspective because most were carried out in humid subtropical and tropical regions. Hu et al (2018) studied plant recolonization after landslides in a semiarid climate and reported different aspects of the effects of landslides on the development of soil and vegetation. Further studies on a broad range of variables at landslide sites under different climatic regimes should be carried out to improve our understanding of landslide ecosystems. This could help ecosystem management in landslide-prone regions.

ACKNOWLEDGMENTS

This work was supported by JSPS KAKENHI Grant Numbers JP26350404 and JP17H02033. The author is grateful to Professor Yoshihiko Kariya of Senshu University for his valuable comments during the course of this work. The author also benefited from discussions with members of the Research Group for Natural History in Kamikochi.

REFERENCES

1.

Blackwell MS, Pilgrim ES . 2011. Ecosystem services delivered by small-scale wetlands. Hydrological Sciences Journal 56:1467–1484. Google Scholar

2.

Breiman L. 2001. Random forests. Machine Learning 45:5–32. Google Scholar

3.

Chawla NV, Bowyer KW, Hall LO, Kegelmeyer WP . 2002. SMOTE: Synthetic Minority Over-Sampling Technique. Journal of Artificial Intelligence Research 16:321–357. Google Scholar

4.

Chimner RA, Lemly JM, Cooper DJ . 2010. Mountain fen distribution, types and restoration priorities, San Juan Mountains, Colorado, USA. Wetlands 30:763–771. Google Scholar

5.

Elias R, Dias E . 2009. Effects of landslides on the mountain vegetation of Flores Island, Azores. Journal of Vegetation Science 20:706–717. Google Scholar

6.

Gansert D. 2004 . Treelines of the Japanese Alps: Altitudinal distribution and species composition under contrasting winter climates. Flora—Morphology, Distribution, Functional Ecology of Plants 199:143–156. Google Scholar

7.

Geological Survey of Japan . 2009. Seamless Geological Map of Japan at a Scale of 1:200,000. DVD edition. Tsukuba, Japan: Geological Survey of Japan, National Institute of Advanced Industrial Science and Technology. Google Scholar

8.

Hamasaki E, Miyagi T . 2018. TXT-tool 1.081-2.2: Landslide mapping through the interpretation of aerial photographs and topographic maps. In : Sassa K, Guzzetti F, Yamagishi H, Arbanas Ž, Casagli N, McSaveney M, Dang K, editors. Landslide Dynamics: ISDR-ICL Landslide Interactive Teaching Tools . Cham, Switzerland: Springer, pp 53–66. Google Scholar

9.

Hu S, Jiao J, García-Fayos P, Kou M, Chen Y, Wang W . 2018. Telling a different story: Plant recolonization after landslides under a semi-arid climate. Plant and Soil 426:163–178. Google Scholar

10.

Iwata S. 1983. Physiographic conditions for the rubble slope formation on Mt. Shirouma-dake, the Japan Alps. Geographical Reports of Tokyo Metropolitan University 18:1–51. Google Scholar

11.

Japan Meteorological Agency . 2012. Mesh Climatic Data 2010 . Tokyo, Japan: Japan Meteorological Business Support Center. Google Scholar

12.

Kajimoto T, Seki T, Ikeda S, Daimaru H, Okamoto T, Onodera H . 2002. Effects of snowfall fluctuation on tree growth and establishment of subalpine Abies mariesii near upper forest-limit of Mt. Yumori, northern Japan. Arctic, Antarctic, and Alpine Research 34:191–200. Google Scholar

13.

Kariya Y, Takaoka S, Sato G . 2013. Landslides and alpine-subalpine vegetation in the Northern Japanese Alps [in Japanese with English abstract]. Journal of Geography-Chigaku Zasshi 122:768–790. Google Scholar

14.

Koizumi T. 1999. Plant communities caused by landslides in snowy mountains on the side of Japan Sea [in Japanese with English abstract]. Bulletin of Tokyo Gakugei University, Section 3, Social Sciences 50:49–59. Google Scholar

15.

Kruckeberg AR. 2004. Geology and Plant Life: The Effects of Landforms and Rock Types on Plants . Seattle, WA: University of Washington Press. Google Scholar

16.

Liaw A, Wiener M . 2002. Classification and regression by randomForest. The Newspaper of R Project 2/3:18–22. Google Scholar

17.

McCalpin J. 1984. Preliminary age classification of landslides for inventory mapping. In : Proceedings of the 21st Engineering Geology and Soils Engineering Symposium . Moscow, ID: University of Idaho, pp 99–120. Google Scholar

18.

Miles DWR, Swanson F . 1986. Vegetation composition on recent landslides in the Cascade Mountains of western Oregon. Canadian Journal of Forest Research 16:739–744. Google Scholar

19.

Mishima Y, Higaki D, Makita, H . 2009. Relationship between microtopography and plants in a small landslide area in the Shirakami Mountains [in Japanese with English abstract]. Quarterly Journal of Geography 61:109–118. Google Scholar

20.

Myster RW, Fernández DS . 1995. Spatial gradients and patch structure of two Puerto Rican landslides. Biotropica 27:149–159. Google Scholar

21.

Myster RW, Thomlinson JR, Larsen MC . 1997. Predicting landslide vegetation in patches on landscape gradients in Puerto Rico. Landscape Ecology 12:299–307. Google Scholar

22.

Nakashizuka T, Iida S, Suzuki W, Tanimoto T . 1993. Seed dispersal and vegetation development on a debris avalanche on the Ontake volcano, central Japan. Journal of Vegetation Science 4:537–542. Google Scholar

23.

National Research Institute for Earth Science and Disaster Prevention . 2013. Landslide Distribution Maps. National Research Institute for Earth Science and Disaster Prevention .  http://dil-opac.bosai.go.jp/publication/nied_tech_note/landslidemap/index.html; accessed on 16 Jul 2018. Google Scholar

24.

Okitsu S. 1991. Multiple-stem formation of Betula ermanii growing at the forest limit on the high mountains of central Japan [in Japanese with English abstract]. Technical Bulletin of Faculty of Horticulture, Chiba University (44):141–146. Google Scholar

25.

Ozeki M. 2001. Distribution of subalpine forests in Hida Mountains of Chubu Area, Nagano Prefecture [in Japanese with English abstract]. Bulletin of Nagano Nature Conservation Research Institute 4:293–299. Google Scholar

26.

Parker KC, Bendix J . 1996. Landscape-scale geomorphic influences on vegetation patterns in four environments. Physical Geography 17:113–141. Google Scholar

27.

R Core Team . 2016. R: A Language and Environment for Statistical Computing . Vienna, Austria: R Foundation for Statistical Computing. Google Scholar

28.

Restrepo C, Walker LR, Shiels AB, Bussmann R, Claessens L, Fisch S, Lozano P, Negi G, Paolini L, Poveda G, Ramos-Scharrón C, Richter M, Velázquez E . 2009. Landsliding and its multiscale influence on mountainscapes. BioScience 59:685–698. Google Scholar

29.

Sasaki N, Sugai T . 2015. Distribution and development processes of wetlands on landslides in the Hachimantai Volcanic Group, NE Japan. Geographical Review of Japan Series B 87:103–114. Google Scholar

30.

Shiels AB, West CA, Weiss L, Klawinski PD, Walker LR . 2008. Soil factors predict initial plant colonization on Puerto Rican landslides. Plant Ecology 195:165–178. Google Scholar

31.

Takahashi N. 1990. Environmental-geomorphological study on the Holocene mire development in the Daisetsuzan Mountains, central Hokkaido, northern Japan. Journal of the Graduate School of Environmental Science, Hokkaido University, Sapporo 13:93–156. Google Scholar

32.

Takaoka S. 1999. Stability of subalpine forest–meadow boundary inferred from size and age structure of Abies mariesii thickets on a Japanese snowy mountain. Journal of Forest Research 4:35–40. Google Scholar

33.

Takaoka S. 2013. Effects of landslides on vegetation with special reference to significance of studies from a geo-historical viewpoint [in Japanese with English abstract]. Vegetation Science 30:133–144. Google Scholar

34.

Takaoka S. 2015. Origin and geographical characteristics of ponds in a high mountain region of central Japan. Limnology 16:103–112. Google Scholar

35.

Torgo L. 2010. Data Mining with R, Learning With Case Studies . Boca Raton, FL: Chapman and Hall/CRC. Google Scholar

36.

Velázquez E, Gómez-Sal A . 2008. Landslide early succession in a neotropical dry forest. Plant Ecology 199:295–308. Google Scholar

37.

Walker LR, Shiels AB . 2013. Landslide Ecology . Cambridge, UK: Cambridge University Press. Google Scholar

38.

Walker LR, Zarin DJ, Fetcher N, Myster RW, Johnson AH . 1996. Ecosystem development and plant succession on landslides in the Caribbean. Biotropica 28:566–576. Google Scholar

39.

Yoshimatsu H, Abe S . 2006. A review of landslide hazards in Japan and assessment of their susceptibility using an analytical hierarchic process (AHP) method. Landslides 3:149–158. Google Scholar
© 2019 Takaoka. This open access article is licensed under a Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/). Please credit the author and the full source.
Sadao Takaoka "Regional Variations in Vegetation Patterns on Landslides in the Snowy Mountains of Central Japan," Mountain Research and Development 39(3), R33-R41, (15 August 2019). https://doi.org/10.1659/MRD-JOURNAL-D-19-00028.1
Published: 15 August 2019
KEYWORDS
Japan
Landslide ecosystem
litholog
mountain wetland
snow conditions
vegetation diversity
Back to Top