A method for assisting the accident consequence prediction and cause investigation in petrochemical industries based on natural language processing technology

Risk analysis for production processes in the petrochemical industry is an important procedure for consequence prediction and investigation of accidents. The analyzer must grasp the correlations between the possible causes and consequences. From the potential cause and effect found in risk analysis...

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Bibliographic Details
Published inJournal of loss prevention in the process industries Vol. 83; p. 105028
Main Authors Wang, Feng, Gu, Wunan, Bai, Yan, Bian, Jing
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.07.2023
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ISSN0950-4230
DOI10.1016/j.jlp.2023.105028

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Summary:Risk analysis for production processes in the petrochemical industry is an important procedure for consequence prediction and investigation of accidents. The analyzer must grasp the correlations between the possible causes and consequences. From the potential cause and effect found in risk analysis reports, complete clarification should be obtained. Therefore, this study presents a method for assisting accident consequence prediction and investigation in the petrochemical industry based on risk analysis reports using natural language processing technology. First, a hazard and operability (HAZOP) historical data table is established by filling over 7200 HAZOP analysis data points. Both the causes and consequences in the table are classified into 20 categories each using the Latent Dirichlet Allocation (LDA) models. The LDA clustering results are assigned classification for the cause and consequence topics to the cause and consequences of the HAZOP analysis data. Based on part-of-speech (POS) tagging, all the words in each cause and consequence record are divided into subject and action words. Next, the word combinations of subject and action words with a higher occurrence are considered the key phrases for describing and representing the corresponding cause and consequence topic classifications. The Apriori algorithm is used to determine the frequent item sets, acquire the association rules, and calculate the association degree to obtain the sort order; it can highlight general trends in relational cause and consequence topics. According to the results, the most likely cause of the consequence and the most likely consequence that the cause may lead to are identified. Finally, a visual interface is developed to present the data for the consequence prediction and cause investigation of accidents. The results reveal that the quantity and quality of historic data are important factors that may influence the results. This method can contribute to predicting the accident evolution trend of an abnormal situation, taking preventive measures in advance, improving the accuracy of early warning, and supporting emergency response measures. •Proposing a method for assisting the accident consequence prediction and cause investigation in petrochemical industries based on natural language processing.•Using the LDA model and POS tagging to explore the potential topic information of causes and consequences in HAZOP analysis data.•Based on HAZOP historical data query and the Apriori algorithm to determine the association relationship of causes and consequences.
ISSN:0950-4230
DOI:10.1016/j.jlp.2023.105028