基于BP神经网络的非煤矿事故自然安全预测

W. Dan, Zhou Keping, Chen Qingfa
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引用次数: 0

摘要

矿井灾害系统具有典型的非线性特征。传统的、以往的功能设定评价方法和预测方法已经显现出其局限性。BP神经网络具有非线性动态特性,消除了前一种方法在权重确定过程中人为因素带来的漂移值。这是一种很有前途的自然安全预测方法。首先,通过对已知样本的研究,得到满足收敛条件的网络权值参数。然后以此为基础计算矿山预测指标体系参数,对预测矿山进行安全预测。BP计算的预测值与实际值的误差在2.22% ~ 5.54%之间,表明训练模型的预测更加准确可靠。研究内容对矿山安全管理和科学决策具有重要的指导意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Natural safety prediction of non-coal mine accident based on BP neural network
Mine disaster system has the typical non-linear features. The traditional, previously function-setting evaluation methods and prediction methods have appeared their limitations. The BP neural network, with the nonlinear dynamic characteristics, eliminated the drift value brought about by man-made factors during the weight determination using the previous method. It is a promising natural safe-forecasting method. First, obtain the network weight parameters meets the convergence conditions through studying the known samples. Then using them as foundation to calculate mine forecast indicator system parameters, made safety prediction of forecast mines. The error between BP calculated predictive value and the actual value range from 2.22 to 5.54 percent, which showed that the training model is more accurate and reliable to forecast. The study contents have important guiding significance to mine safety management and scientific decision-making.
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