基于递归特征消除的平均神经网络洪水灾害评价

B. Choubin, A. Jaafari, Jalal Henareh, F. Hosseini, Amir H. Mosavi
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引用次数: 0

摘要

本文提出了一种利用水文环境特征和雷达图像信息进行高精度洪泛区识别的新方法。结合平均神经网络(avNNet)和特征提取算法来实现这一目标。采用递归特征消去(RFE)方法提取相关特征。然后,利用avNNet对这些特征进行分类/识别危险区域。基于RFE方法的结果,与河流的距离、高程、植被、排水密度、降水和坡度6个变量是该地区洪水灾害建模最重要的影响变量。简而言之,根据结果,avNNet模型在不同使用的回归期的准确率超过96%,Kappa值大于93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Averaged Neural Network Integrated with Recursive Feature Elimination for Flood Hazard Assessment
This article proposes a novel method for identifying flooded areas with high accuracy using information from hydro-environmental features and Radar images. A combination of averaged neural networks (avNNet) and feature extraction algorithms were used to achieve this goal. The recursive feature elimination (RFE) method was utilized to Figure out the relevant features. Then, the avNNet was employed on these features to classify/identify hazardous areas. Based on the outcomes of the RFE method, six variables of distance from river, elevation, vegetation, drainage density, precipitation, and slope were the most crucial influencing variables for flood hazard modeling in the area. In a nutshell, according to the results, the avNNet model achieved an accuracy of more than 96% and Kappa values greater than 93% for different used return periods.
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