HAZOP is a safety paradigm undertaken to reveal hazards in industry, its report covers valuable hazard events (HaE). The research on HaE classification has much irreplaceable pragmatic values. However, no study has paid such attention to this topic. In this paper, we present a novel deep learning model termed DLF to explore the HaE classification through fractal method from the perspective of language. The motivation is that (1): HaE can be naturally regarded as a kind of time series; (2): the meaning of HaE is driven by word arrangement. Specifically, first we employ BERT to vectorize HaE. Then, we propose a new multifractal method termed HmF-DFA to calculate HaE fractal series by analyzing the HaE vector who is regarded as a time series. Finally, we design a new hierarchical gating neural network (HGNN) to process the HaE fractal series to accomplish the classification of HaE. We take 18 processes for case study. We launch the experiment on the basis of their HAZOP reports. Experimental results demonstrate that our DLF classifier is satisfactory and promising, the proposed HmF-DFA and HGNN are effective, and the introduction of language fractal into HaE is feasible. Our HaE classification system can serve HAZOP and bring application incentives to experts, engineers, employees, and other enterprises, which is conducive to the intelligent development of industrial safety. We hope our research can contribute added support to the daily practice in industrial safety and fractal theory.
翻译:HAZOP是揭示工业危害的安全范式,它的报告涵盖了宝贵的危害事件。关于HaE分类的研究具有不可替代的实用价值。然而,没有研究对这个主题给予如此的关注。在本文中,我们提出了一个叫DLF的新型深层次学习模式,从语言角度探索HAE分类。动机是:(1)HAE可以自然地被视为一种时间序列;(2)HAE的含义由文字安排驱动。具体地说,我们首先使用BERT来将HAE进行病媒化。然后,我们提出一种叫做HMF-DFA的多分形方法,用来计算HAE的分形系列。我们提出一个新的深层次学习模式,名为DLF,用来分析被视为时间序列的HAE矢量。最后,我们设计了一个新的分级神经网络(HGNNN)来处理HE的分类。 我们用18个过程来进行案例研究。我们用他们的HAZOP报告来做实验。 我们的实验结果表明,我们的DLF分类师的分类方法是满意和有希望的,HF-DFA和HG的引入能为HA-NA和HAFA的投资者带来有效的发展。