基于广义神经网络的滑坡灾害预警系统

A. Sofwan, Sumardi, Thariq Hizrian Azka
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引用次数: 1

摘要

印度尼西亚经常发生山体滑坡,多达274个地区/城市容易发生山体滑坡。影响滑坡发生的参数有很多,如降雨、土地坡度、土壤湿度、振动等。需要提供一个系统,它不仅能够处理数据参数,提供滑坡灾害的早期预警,而且还能增加人们的准备,以尽量减少灾害造成的损失。采用广义回归神经网络方法识别各参数对滑坡灾害发生的影响。在现场条件下进行试验,在安全、警戒、危险条件下进行模拟,了解人工神经网络的计算结果。仿真结果与人工神经网络前馈反馈传播和人工计算进行了比较,验证了所提方法的有效性。现场仿真验证表明,广义回归法和前馈反向传播法的平均误差分别为0.00115和0.08702。此外,前一种方法的均方误差性能优于后一种方法,分别为2.9157e-06和0.0112。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early Warning System of Landslide Disaster using Generalized Neural Network Algorithm
Landslides are frequently happened Indonesia, as many as 274 districts / cities are prone to landslides. There are many parameters that affect the landslide occurrence such as rainfall, land slope, soil moisture, and vibration. It is needed to provide a system that not only able to process data parameters to provide early warning of landslide disaster, but also increase the readiness of the population to minimize losses caused by this disaster. Generalized Regression Neural Network method is used to identify the effect of each parameter on the occurrence of landslide disaster. Tests conducted on field conditions and simulations on safe, alert, and danger condition to know the calculation result of artificial neural network. The simulation results are compared with the artificial neural network feed forward back propagation and manual calculations to demonstrate the effectiveness of the proposed method. The validation test on field condition using simulation shows average error of Generalized Regression method and Feed Forward Backpropagation method are 0.00115 and 0.08702, respectively. Furthermore, the Mean Square Error performance of the former method is better than that of the latter with values of 2.9157e-06 and 0.0112, severally.
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