平顶山no多变量预测模型研究。10 .基于BP神经网络的矿井瓦斯含量

Hao Tianxuan, Shi Ling
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引用次数: 0

摘要

首先研究了含气量BP神经网络的数学原理和数值算法,然后给出了平顶山地质勘查开采含气量实测数据。采集了10WU9-10个地雷,获得了12个可靠点。选取深度、煤层厚度、煤层顶板岩性3个因素作为输入要素,分别构建了基于BP神经网络的含气量多元预测模型。根据计算和评价结果,该模型的精度满足工程精度要求,表明BP神经网络预测平顶山煤矿9-10 - 10煤层瓦斯含量是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on multivariate forecast model of PingdingshanNO.10 mine gas content based on BP neural network
The mathematic principles and numerical algorithm of BP neural network for gas contents were firstly studied, Then, the actual measurement data of gas contents during geological prospecting and mining of PingdingshanNO.10WU9-10 mine were collected, and 12 reliable dots were gained. By selecting 3 factors including depth, coal seam thickness and coal roof lithology as the input element, and the multivariate forecast models of gas contents based on BP neural network were respectively constructed. According to the calculation and evaluation of results, accuracy of the model to meet the requirements of engineering precision, indicated that BP neural network to predict mine e Pingdingshan 9–10 ten gas content of coal seam gas is feasible.
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