Abstract

Land degradation monitoring is of vital importance to provide scientific information for promoting sustainable land utilization. This paper presents an expert knowledge and BP-ANN-based approach to detect and monitor land degradation in an effort to overcome the deficiencies of image classification and vegetation index-based approaches. The proposed approach consists of three generic steps: (1) extraction of knowledge on the relationship between land degradation degree and predisposing factors, which are NDVI and albedo, from domain experts; (2) establishment of a land degradation detecting model based on the BP-ANN algorithm; and (3) land degradation dynamic analysis. A comprehensive analysis was conducted on the development of land degradation in the Ordos Plateau of China in 1990, 2000 and 2010. The results indicate that the proposed approach is reliable for monitoring land degradation, with an overall accuracy of 91.2%. From 1990–2010, a reverse trend of land degradation is observed in Ordos Plateau. Regions with relatively high land degradation dynamic were mostly located in the northeast of Ordos Plateau. Additionally, most of the regions have transferred from a hot spot of land degradation to a less changed area. It is suggested that land utilization optimization plays a key role for effective land degradation control. However, it should be highlighted that the goals of such strategies should aim at the main negative factors causing land degradation, and the land use type and its quantity must meet the demand of population and be reconciled with natural conditions. Results from this case study suggest that the expert knowledge and BP-ANN-based approach is effective in mapping land degradation.

Highlights

  • Land degradation, which essentially describes the circumstances of the reduced biological productivity of land [1,2], ranks among the greatest global environmental challenges and affects the livelihoods of millions of people [1,2]

  • Using TM images in the years of 1990, 2000 and 2010, visual interpretation was performed on each image with 500 sample pixels of various land degradation degrees and the normalized difference vegetation index (NDVI) and albedo extracted out correspondingly, so that a database for detecting land degradation was built

  • Land degradation detection and monitoring are of vital importance to provide scientific information for sustainable land utilization at local, regional and global scales

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Summary

Introduction

Land degradation, which essentially describes the circumstances of the reduced biological productivity of land [1,2], ranks among the greatest global environmental challenges and affects the livelihoods of millions of people [1,2]. Given the importance of the problem and its recognition as a global issue, it is surprising that to-date, no consensus has been established on adequate methods for land degradation monitoring and assessment [3]. The geographical extent of land degradation remains poorly understood [4,5,6,7]. Monitoring land degradation is vital, but is an urgent scientific issue that must receive attention; it is essential for promoting sustainable land utilization at local, regional and global scales. To meet practical needs, there still exists a huge gap in present studies

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