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Deep Learning Models for Health and Safety Risk Prediction in Power Infrastructure Projects

机译:电力基础设施项目健康与安全风险预测的深度学习模型

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摘要

Inappropriate management of health and safety (H&S) risk in power infrastructure projects can result in occupational accidents and equipment damage. Accidents at work have detrimental effects on workers, company, and the general public. Despite the availability of H&S incident data, utilizing them to mitigate accident occurrence effectively is challenging due to inherent limitations of existing data logging methods. In this study, we used a text-mining approach for retrieving meaningful terms from data and develop six deep learning (DL) models for H&S risks management in power infrastructure. The DL models include DNNclassify (risk or no risk), DNNreg1 (loss time), DNNreg2 (body injury), DNNreg3 (plant and fleet), DNNreg4 (equipment), and DNNreg5 (environment). An H&S risk database obtained from a leading UK power infrastructure construction company was used in developing the models using the H2O framework of the R language. Performances of DL models were assessed and benchmarked with existing models using test data and appropriate performance metrics. The overall accuracy of the classification model was 0.93. The average R-2 value for the five regression models was 0.92, with mean absolute error between 0.91 and 0.94. The presented results, in addition to the developed user-interface module, will help practitioners obtain a better understanding of H&S challenges, minimize project costs (such as third-party insurance and equipment repairs), and offer effective strategies to mitigate H&S risk.
机译:权力基础设施项目的不恰当的健康和安全(H&S)风险可能导致职业事故和设备损​​坏。工作中的事故对工人,公司和公众有不利影响。尽管H&S入射数据的可用性,但利用它们减轻事故发生,有效地发生了由于现有数据记录方法的固有局限性而有效地挑战。在这项研究中,我们使用了文本挖掘方法,用于从数据中检索有意义的术语,并在权力基础设施中开发H&S风险管理的六种深度学习(DL)模型。 DL模型包括DNNClassify(风险或风险),DNNREG1(损失时间),DNNREG2(体损伤),DNNREG3(植物和舰队),DNNREG4(设备)和DNNREG5(环境)。从领先的英国电力基础设施建设公司获得的H&S风险数据库用于使用R语言的H2O框架开发模型。使用测试数据和适当的性能指标,评估DL模型的性能和基准测试,并使用现有模型进行基准。分类模型的整体准确性为0.93。五个回归模型的平均R-2值为0.92,平均绝对误差在0.91和0.94之间。除了发达的用户界面模块外,呈现的结果将有助于从业人员更好地了解H&S挑战,最大限度地减少项目成本(如第三方保险和设备维修),并提供有效的策略来缓解H&S风险。

著录项

  • 来源
    《Risk analysis》 |2020年第10期|2019-2039|共21页
  • 作者单位

    Univ West England Big Data Enterprise & Artificial Intelligence Lab Bristol Avon England;

    Univ West England Big Data Enterprise & Artificial Intelligence Lab Bristol Avon England;

    Univ West England Big Data Enterprise & Artificial Intelligence Lab Bristol Avon England;

    Univ West England Big Data Enterprise & Artificial Intelligence Lab Bristol Avon England;

    Univ West England Big Data Enterprise & Artificial Intelligence Lab Bristol Avon England;

    Univ West England Big Data Enterprise & Artificial Intelligence Lab Bristol Avon England;

    Univ West England Big Data Enterprise & Artificial Intelligence Lab Bristol Avon England;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Artificial intelligence; deep learning; health and safety risk;

    机译:人工智能;深入学习;健康和安全风险;
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