论文标题

通过深度学习和多重分数的新危害事件分类模型

A new hazard event classification model via deep learning and multifractal

论文作者

Wang, Zhenhua, Wang, Bin, Ren, Ming, Gao, Dong

论文摘要

危害和可操作性分析(HAZOP)是工业安全的范式,可以从其节点偏差,后果,原因,措施和建议中揭示过程的危害,并且可以将这些危害视为危害事件(HAE)。 HAE的分类研究具有不可替代的务实值。在本文中,我们提出了一种新颖的深度学习模型,该模型通过多重分子称为DLF,以探索HAE分类,其中动机是可以自然地将HAE视为一种时间序列。具体而言,首先将HAE通过使用Bert来获得HAE时间序列。然后,提出了一种新的称为HMF-DFA的多重分析方法通过分析HAE时间序列来赢得HAE分形系列。最后,新的分层门控神经网络(HGNN)旨在处理HAE分形系列,以从三个方面:严重性,可能性和风险来完成HAE的分类。我们将HAZOP报告称为18个过程,并以此为基础启动实验。结果表明,与其他分类器相比,DLF分类器在精确度,召回和F1得分的指标下表现更好,尤其是对于严重性方面。此外,HMF-DFA和HGNN有效地促进了HAE分类。我们的HAE分类系统可以为专家,工程师,员工和其他企业提供应用程序激励措施。我们希望我们的研究能为工业安全的日常实践提供更多的支持。

Hazard and operability analysis (HAZOP) is the paradigm of industrial safety that can reveal the hazards of process from its node deviations, consequences, causes, measures and suggestions, and such hazards can be considered as hazard events (HaE). The classification research on HaE has much irreplaceable pragmatic values. In this paper, we present a novel deep learning model termed DLF through multifractal to explore HaE classification where the motivation is that HaE can be naturally regarded as a kind of time series. Specifically, first HaE is vectorized to get HaE time series by employing BERT. Then, a new multifractal analysis method termed HmF-DFA is proposed to win HaE fractal series by analyzing HaE time series. Finally, a new hierarchical gating neural network (HGNN) is designed to process HaE fractal series to accomplish the classification of HaE from three aspects: severity, possibility and risk. We take HAZOP reports of 18 processes as cases, and launch the experiments on this basis. Results demonstrate that compared with other classifiers, DLF classifier performs better under metrics of precision, recall and F1-score, especially for the severity aspect. Also, HmF-DFA and HGNN effectively promote HaE classification. Our HaE classification system can serve application incentives to experts, engineers, employees, and other enterprises. We hope our research can contribute added support to the daily practice in industrial safety.

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