我国西南喀斯特地区山高坡陡.地形破碎,生境脆弱.水土流失严重,是我国典型的极贫困代表区域之一。本文选择贵州省猫跳河流域作为研究区.以乡镇为基本单元.应用GIS和ANN技术,模拟区域自然致贫因子和消贫因子的空间分布.计算各乡镇的贫困度,揭示区域贫困的空间分布格局,以期为指导研究区早日脱贫及生态重建提供科学依据。结果表明,地形、土壤侵蚀等自然要素是主要的致贫因子.而社会经济要素是缓解贫困的因子。贫困度较小的乡镇主要分布在研究区的中部和东部,贫困度较大的乡镇主要分布在研究区的南部和北部边缘。可见.应用人工神经网络模拟区域贫困化简便、实用,避免了传统的单纯依靠统计数据进行贫困化研究的做法.是一种可行的方法与技术途径。
Owing to the fragile eco-environment, the karst area in Southwest China is one of the di shed as study area, taking villages and towns as terrain fragmentation, and serious soil erosion, stinct poor regions. Selecting Maotiaohe waterstudying unit, and using GIS and ANN model, this paper simulates the spatial distribution of natural impoverishing index and socio-economic alleviating impoverishing index, calculates the poverty degree of villages and towns, and reveals the spatial distribution of poverty in order to provide scientific basis for eliminating poverty and ecological reconstruction. The results show that the natural factors such as soil erosion and so on are the main impoverishing indexes, and socio-economic factors are the main alleviating impoverishing indexes. The villages and towns with smaller poverty degree are mainly distributed in the middle and east area of Maotiaohe watershed, and those with larger poverty degree are mainly distributed in the southern and northern area of Maotiaohe watershed. The results also indicate that application of BP neural network to simulating regional poverty is convenient, precise and feasible, which can be an alternative approach to simulating regional poverty.