Title

Linking Grnn And Neighborhood Selection Algorithm To Assess Land Suitability In Low-Slope Hilly Areas

Keywords

GRNN; Land suitability; Low-slope hilly areas; Neighborhood selection algorithm

Abstract

Land resources in mountainous areas have become severely inadequate because of accelerated urbanization and industrialization, rational land exploitation in low-slope hilly areas can solve this issue. Under the protection of ecological security, this study applied a new method that combined generalized regression neural network (GRNN) and neighborhood selection algorithm (NSA) to evaluate the land suitability with a case study in Dali Prefecture, China. Land development potential was also measured and mapped according to the area proportion of land suitable to be exploited in each township. The results demonstrated that 2139 km2 and 871 km2 of low-slope hilly land were suitable for development of farmland and construction land, respectively. Of this resource, 1687 km2 and 419 km2 were identified as single-suitability area for farmland and construction land respectively, with 452 km2 of multi-suitability area. After trade-off analysis based on NSA, the final area suitable for development of farmland and construction land were 1909 km2 and 387 km2 respectively, with 4600 km2 restricted to development. The township development priority was determined according to the land development potential, which helped for local development planning. The methodology applied in this study provides an effective way to make decisions on land development and management in mountainous areas.

Publication Date

10-1-2018

Publication Title

Ecological Indicators

Volume

93

Number of Pages

581-590

Document Type

Article

Personal Identifier

scopus

DOI Link

https://doi.org/10.1016/j.ecolind.2018.05.008

Socpus ID

85047400588 (Scopus)

Source API URL

https://api.elsevier.com/content/abstract/scopus_id/85047400588

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