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Neural network-based prediction methods for height of water-flowing fractured zone caused by underground coal mining

机译:基于神经网络的地下煤开采引起的水流裂缝区高度预测方法

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摘要

The accurate calculation of the height of water-flowing fractured zone (WFFZ) in coal mine is a critical factor in ensuring mine safety and protecting surficial eco-environment. In view of inapplicability of traditional empirical formula for predicting the height of WFFZ, the correlation of the height of WFFZ and influence factors was analyzed firstly based on 82 collected groups of coalfield measured data in China. Results show that the mining thickness and mining depth have a significant effect on the height of WFFZ. Subsequently, the measured data were divided into two parts: 80% for training models and the remaining 20% for validation. Two prediction models, i.e., the multiple regression (MR) model and BP neural network (BPNN) model, were established and trained. A new merging model, multiple regression-BP neural network (MR-BPNN) model, was proposed by combining the multiple regression and BP neural network model. The prediction accuracy and generalization ability of the three models were verified by the recorded testing samples. Results of comparison suggest that three models all had better applicability for predicting the height of WFFZ in the coalmine, compared with the existing empirical prediction methods. More importantly, the MR-BPNN merging model combined the nonlinear mapping ability of neural network and empiric of multiple regression model, which could provide high-accurate, strong-generalized, and practical application for predicting the height of WFFZ of coalfield. In addition, the reason for the inapplicability of traditional empirical formula and the practicability of the proposed neural network-based prediction models were discussed.
机译:煤矿水流裂缝区(WFFZ)高度的准确计算是确保矿井安全性和保护曲线环境的关键因素。鉴于传统经验公式的不适用性预测WFFZ的高度,基于中国煤田测量数据的82个煤田群体首先分析了WFFZ高度和影响因素的相关性。结果表明,采矿厚度和采矿深度对WFFZ的高度具有显着影响。随后,测量的数据分为两部分:80%用于训练模型,剩余的20%用于验证。建立和培训了两个预测模型,即多次回归(MR)模型和BP神经网络(BPNN)模型。通过组合多元回归和BP神经网络模型提出了一种新的合并模型,多次回归-BP神经网络(MR-BPNN)模型。通过记录的测试样本验证了三种模型的预测准确性和泛化能力。比较结果表明,与现有的经验预测方法相比,三种模型均具有更好地适用于预测煤矿中WFFZ的高度。更重要的是,MR-BPNN合并模型将神经网络的非线性映射能力组合了多元回归模型的非线性映射能力,可以为预测煤田WFFZ的高度提供高准确,强大的,实际应用。此外,讨论了传统经验公式的不适用性的原因及所提出的基于神经网络的预测模型的实用性。

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