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Flash-Flood Potential Mapping Using Deep Learning Alternating Decision Trees and Data Provided by Remote Sensing Sensors

机译:使用深度学习交替决策树和遥感传感器提供的数据的闪光泛潜能映射

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摘要

There is an evident increase in the importance that remote sensing sensors play in the monitoring and evaluation of natural hazards susceptibility and risk. The present study aims to assess the flash-flood potential values, in a small catchment from Romania, using information provided remote sensing sensors and Geographic Informational Systems (GIS) databases which were involved as input data into a number of four ensemble models. In a first phase, with the help of high-resolution satellite images from the Google Earth application, 481 points affected by torrential processes were acquired, another 481 points being randomly positioned in areas without torrential processes. Seventy percent of the dataset was kept as training data, while the other 30% was assigned to validating sample. Further, in order to train the machine learning models, information regarding the 10 flash-flood predictors was extracted in the training sample locations. Finally, the following four ensembles were used to calculate the Flash-Flood Potential Index across the Bâsca Chiojdului river basin: Deep Learning Neural Network–Frequency Ratio (DLNN-FR), Deep Learning Neural Network–Weights of Evidence (DLNN-WOE), Alternating Decision Trees–Frequency Ratio (ADT-FR) and Alternating Decision Trees–Weights of Evidence (ADT-WOE). The model’s performances were assessed using several statistical metrics. Thus, in terms of Sensitivity, the highest value of 0.985 was achieved by the DLNN-FR model, meanwhile the lowest one (0.866) was assigned to ADT-FR ensemble. Moreover, the specificity analysis shows that the highest value (0.991) was attributed to DLNN-WOE algorithm, while the lowest value (0.892) was achieved by ADT-FR. During the training procedure, the models achieved overall accuracies between 0.878 (ADT-FR) and 0.985 (DLNN-WOE). K-index shows again that the most performant model was DLNN-WOE (0.97). The Flash-Flood Potential Index (FFPI) values revealed that the surfaces with high and very high flash-flood susceptibility cover between 46.57% (DLNN-FR) and 59.38% (ADT-FR) of the study zone. The use of the Receiver Operating Characteristic (ROC) curve for results validation highlights the fact that FFPIDLNN-WOE is characterized by the most precise results with an Area Under Curve of 0.96.
机译:遥感传感器在监测和评估自然危害易感性和风险的监测和评估中,显然存在显而易见的增加。本研究旨在评估罗马尼亚的小集装箱中的闪蒸潜在价值,使用提供遥感传感器和地理信息系统(GIS)数据库,该数据库作为输入数据涉及到多个四个集合模型。在第一阶段,借助于Google地球应用的高分辨率卫星图像,获得了481个受激烈过程的点,另一个481点在没有暴力过程的区域中随机定位。将70%的数据集保存为培训数据,而另外30%被分配给验证样本。此外,为了训练机器学习模型,在训练样本位置提取有关10闪蒸预测器的信息。最后,以下四个集合用于计算BâscaChiojdului河流域的闪光潜力指数:深度学习神经网络 - 频率比(DLNN-FR),深学习神经网络权重(DLNN-WOE),交替的决策树 - 频率比(ADT-FR)和交替决定树 - 权重的证据(ADT-WOE)。使用若干统计指标评估模型的性能。因此,就敏感性而言,通过DLNN-FR模型实现了0.985的最高值,同时将最低的值(0.866)分配给ADT-FR合奏。此外,特异性分析表明,最高值(0.991)归因于DLNN-WOE算法,而ADT-FR实现最低值(0.892)。在培训程序期间,模型在0.878(ADT-FR)和0.985(DLNN-WOE)之间实现了总体精度。 K-index再次显示最表情模型是DLNN-WOE(0.97)。闪光泛潜能指数(FFPI)值显示,具有高且非常高的闪蒸易感性覆盖的表面在46.57%(DLNN-FR)和59.38%(ADT-FR)之间。用于结果验证的接收器操作特性(ROC)曲线突出了FFPIDLNN-WOE的特征在于,最精确的结果,曲线下的面积为0.96。

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