Time Series Prediction of Mining Subsidence Based on Genetic Algorithm Neural Network

Peixian Li, Z. Tan, Lili Yan, K. Deng
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引用次数: 10

Abstract

In order to find out the dynamics law of underground coal mining subsidence, BP neural network was used for time series prediction. First, genetic algorithm was used to optimize the initial network weight to overcome the inherent defects of BP neural network, then train the initial BP neural network with samples and a time series prediction model was established. A railway bridge observing station in a mining area of HeBei was shown as example to describe the method for time series prediction using genetic algorithm BP neural network (GA-BP). The maximum absolute error of forecast value is 14% and the maximum relative error is 15mm, results show that the forecast results fit for the measured values perfectly. The initial network weight can be selected effectively to use BP neural network for mining subsidence time series prediction and avoid the network falling into local minimum, and the network forecasting performance can be improved effectively. The research provides a new method for dynamic mining subsidence prediction.
基于遗传算法神经网络的开采沉陷时序预测
为了找出煤矿井下开采沉陷的动力学规律,采用BP神经网络进行时间序列预测。首先利用遗传算法对初始网络权值进行优化,克服BP神经网络固有的缺陷,然后利用样本对初始BP神经网络进行训练,建立时间序列预测模型;以河北某矿区铁路桥观测站为例,介绍了利用遗传算法BP神经网络(GA-BP)进行时间序列预测的方法。预测值的最大绝对误差为14%,最大相对误差为15mm,结果表明预测值与实测值吻合较好。利用BP神经网络进行开采沉陷时间序列预测,可以有效地选择初始网络权值,避免网络陷入局部最小值,有效地提高了网络的预测性能。该研究为动态开采沉陷预测提供了一种新的方法。
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