A neural network method for risk assessment and real-time early warning of mountain flood geological disaster

Jia Xichun, Wang Ruilan, Dai Hao, Zhang Wei, Liu Zhiwei, Cong Peitong
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引用次数: 1

Abstract

Zhongshan County of Guangxi Zhuang Autonomous Region was selected as the study area to investigate the intelligent assessment and early warning system of mountain flood geological disaster. Remote sensing images, spectral data and DEM data were processed on ENVI and ArcGIS platforms and the quantized data including slope, NDVI, soil looseness coefficient, valley and ridge classification and rainfall were obtained. And then a generalized regression neural network model for risk assessment of mountain flood geological disaster in Zhongshan County was established with the above quantized data as the input factors and the risk degree of the mountain flood geological disaster as the output factor. The trained model by using historical data has an excellent self-learning function and provide a good prediction on the risk degree of the mountain flood geological disaster in Zhongshan County.
山洪地质灾害风险评估与实时预警的神经网络方法
以广西中山县为研究区,对山洪地质灾害智能评估预警系统进行了研究。在ENVI和ArcGIS平台上对遥感影像、光谱数据和DEM数据进行处理,得到坡度、NDVI、土壤疏松系数、谷脊分类和降雨量等量化数据。然后以上述量化数据为输入因素,以山洪地质灾害风险程度为输出因素,建立了中山县山洪地质灾害风险评价的广义回归神经网络模型。利用历史数据训练的模型具有良好的自学习功能,能较好地预测中山县山洪地质灾害的风险程度。
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