Using Neural Network to Evaluate Construction Land Use Suitability

Liqin Zhang, Jiangfeng Li, C. Kong, Liping Qu, Jianghong Zhu, Zhongda Chen, Yida Luo
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引用次数: 2

Abstract

Construction land suitability evaluation is essential for urban development decision. Back Propagation Neural Network (BPNN) is suitable for the non-linear issue. In this study, BPNN architecture has been set up, with 9 neurons of input layer and 4 of output layer. The neurons of input layer include indices related to topography, engineering geology, hydro-geology, and geo-hazard, which are determined based on analysis of Hangzhou land use conditions, suitable for Hangzhou and related urban region construction land suitability research. As the most important basis, learning and testing dataset are determined through Delphi and K-Means Clustering evaluation. The evaluation conclusion shows that conditions of topography features, layer of saturated soft soil, engineering geology, and salinity of groundwater, influence construction land suitability as predominant factors in Hangzhou. And the BPNN model has obvious advantages for land use suitability issues and related researches.
基于神经网络的建设用地适宜性评价
建设用地适宜性评价是城市发展决策的重要依据。反向传播神经网络(BPNN)适用于非线性问题。本研究建立了BPNN的体系结构,其中输入层神经元9个,输出层神经元4个。输入层神经元包括地形、工程地质、水文地质、地质灾害等指标,是在分析杭州市土地利用状况的基础上确定的,适用于杭州市及相关城市区域建设用地适宜性研究。作为最重要的基础,通过Delphi和K-Means聚类评估确定学习和测试数据集。评价结果表明,地形特征、饱和软土层数、工程地质条件和地下水矿化度是影响杭州市建设用地适宜性的主要因素。BPNN模型在土地利用适宜性问题及相关研究中具有明显的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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