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1 November 2016 Competitive Learning Approach to GIS Based Land Use Suitability Analysis
Tellez Ricardo Delgado, Wang Shaohua, Zhong Ershun, Cai Wenwen, Long Liang
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Abstract

This paper uses the expected utility under risk hypothesis to develop a new approach to GIS modeling for land use suitability analysis with competitive learning algorithms (CLG—LUSA). It uses Kohonen’s Self Organized Maps (SOM) and Linear Vector Quantization (LVQ) among other tools to create comprehensive ordering of high number of options. The model uses decision makers preferred locations and environmental data to construct a manifold of the decision's attribute space. Then, decision and uncertainty maps are derived from this manifold. An application example is provided using the selection of suitable environments for coconut development in a municipality of Cuba. CLG—LUSA model was able to provide accurate visual feedback of key aspects of the decision process, making the methodology suitable for personal or group decision making.

Tellez Ricardo Delgado, Wang Shaohua, Zhong Ershun, Cai Wenwen, and Long Liang "Competitive Learning Approach to GIS Based Land Use Suitability Analysis," Journal of Resources and Ecology 7(6), 430-437, (1 November 2016). https://doi.org/10.5814/j.issn.1674-764x.2016.06.003
Received: 15 December 2015; Accepted: 1 August 2016; Published: 1 November 2016
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