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Neural Network-Based Early Warning System for Debris Flow Disaster in the Three Gorges Reservoir Region

机译:三峡库区泥石流灾害基于神经网络的预警系统

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The key techniques of building a real-time forecast model for debris flow disaster using neural network (NN) method are explained in detail in this paper, including the determination of neural nodes at the input layer, the output layer and the implicit layer, the construction of knowledge source and the initial weight values and so on. The neural network-based real-time forecast model for debris flow disaster is built using the rainfall parameters of 40 historical debris flow disasters as training data, which included multiple rainfall factors such as the rainfall of the day disaster happening, the rainfalls of 15 days before the disaster, the maximal rainfall intensity of one hour and ten minutes. Based on the torrent classification and hazard zone mapping of the study region, combined with the rainfall monitoring in the rainy season and real-time weather forecast models, the NN-based early-warning system for debris flow disaster ran well. In this system, GIS technique, advanced international software and hardware were applied, which made performance of the system steady and its applicability wide. It can forecast some most important indices, the probability, the critical rainfall, the warning rainfall, and the refuge rainfall of debris flow occurring, and reduce the direct disserve in the debris flow disasters through the real-time monitoring of rainfall or local weather forecast. As it was a visual information system, we could monitor the variation of the torrent types and hazardous zones, and the torrent management through it, so it could serve the local management and decision-making on the debris flow disaster warning and prevention.
机译:在本文中详细解释了建立用于使用神经网络(NN)方法的碎片流动灾难的实时预测模型的关键技术,包括确定输入层,输出层和隐式层处的神经节点的确定建设知识源和初始重量值等。用于碎片流动灾难的神经网络的实时预测模型是利用40个历史碎片流动灾害的降雨参数作为培训数据建造,其中包括多次降雨因素,如日落灾害发生的降雨,降雨量为15天在灾难发生之前,最大的降雨强度为一小时,十分钟。基于研究区域的洪流分类和危险区测绘,结合雨季的降雨监测和实时天气预报模型,基于NN的碎片流动灾难的早期预警系统。在该系统中,采用了GIS技术,先进的国际软件和硬件,这使得系统稳定的性能及其适用性宽。它可以预测一些最重要的指数,概率,临界降雨,警告降雨以及碎片流量的避难所降雨,并通过对降雨或当地天气预报的实时监测来减少碎片流动灾害中的直接解析。由于它是一种视觉信息系统,我们可以监控洪流类型和危险区域的变化,以及通过它的洪流管理,因此它可以为垃圾流动灾害警告和预防的垃圾管理和决策提供服务。

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