Graph Convolutional Network-Guided Mine Gas Concentration Predictor

Jian Wu, Chaoyu Yang
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Abstract

Coal mining work has always been a high-risk job, although mining technology is now regularly very mature, many accidents still occur every year in various countries around the world, most of which are due to gas explosions, poisoning, asphyxiation and other accidents. Therefore it is important to monitor and predict both underground mine air quality. In this paper, we use the GCN spatio-temporal graph convolution method based on spectral domain for multivariate time series prediction of underground mine air environment. The correlation of these sequences is learned by a self-attentive mechanism, without a priori graph, and the adjacency matrix with an attention mechanism is created dynamically. The temporal and spatial features are learned by graph Fourier transform and inverse Fourier transform in TC module (temporal convolution) and GC module (graph convolution), respectively. Besides, the corresponding experimental predictions are performed on other public datasets. And a new loss function is designed based on the idea of residuals, which greatly improves the prediction accuracy. In addition, the corresponding experimental predictions were performed on other public datasets. The results show that this model has outstanding prediction ability and high prediction accuracy on most time-series prediction data sets. Through experimental verification, this model has high prediction accuracy for dealing with multivariate time series prediction problems, both for long-term and short-term prediction.
图卷积网络导向的矿井瓦斯浓度预测器
煤矿开采工作一直是一项高风险的工作,虽然采矿技术现在已经非常成熟,但是每年在世界各国仍然会发生许多事故,其中大多数是由于瓦斯爆炸、中毒、窒息等事故。因此,对地下矿山空气质量进行监测和预测具有重要意义。本文采用基于谱域的GCN时空图卷积方法对井下空气环境进行多变量时间序列预测。这些序列的相关性通过自注意机制学习,不需要先验图,并动态创建具有注意机制的邻接矩阵。在TC模块(时间卷积)和GC模块(图卷积)中分别通过图傅里叶变换和反傅里叶变换学习时间和空间特征。此外,在其他公共数据集上进行了相应的实验预测。并基于残差思想设计了一种新的损失函数,大大提高了预测精度。此外,在其他公共数据集上进行了相应的实验预测。结果表明,该模型在大多数时间序列预测数据集上具有突出的预测能力和较高的预测精度。通过实验验证,该模型在处理多变量时间序列预测问题时,无论是长期预测还是短期预测,都具有较高的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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