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首页> 外文期刊>Journal of loss prevention in the process industries >Deep neural network and random forest classifier for source tracking of chemical leaks using fence monitoring data
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Deep neural network and random forest classifier for source tracking of chemical leaks using fence monitoring data

机译:深度神经网络和随机林分类器,用于使用栅栏监测数据进行化学泄漏的源跟踪

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Chemical plant leak accidents are classified as one of the major industrial accidents that can spread secondary and tertiary major disasters. It is very important to keep track and diagnose the source location(s) and notify the plant manager and emergency responders promptly to alleviate secondary and tertiary damages, improving the effectiveness of emergency responses. In this study, we propose an emergency response system that can cope with leak accidents of a chemical plant by monitoring sensor data and track down the suspected leak source using machine learning: Deep-learning and Random Forest classifiers. It is also difficult to get enough chemical leak accident scenario data or perform actual leak experiments on real plants due to high risk and cost factors. Consequently, Computational Fluid Dynamics (CFD) simulations are used to derive fence monitoring data for chemical leak accident scenarios. These data are to train the machine learning models to predict leak source locations. Six time-series Deep Neural Network (DNN) structures and three Random Forest (RF) structures are trained using CFD dispersion simulation results for 640 leak accident scenarios of a real chemical plant, divided as training and test datasets. As a result, on DNN model using 25 hidden layers and on RF model using 100 decision trees, 75.43% and 86.33% prediction accuracy are achieved, respectively, classifying the most probable leak source out of 40 potential leak source locations. Analyzing the predicted leak source locations that are wrongly classified, those predicted leak sources are also quite adjacent to the actual leak location and hardly called as misclassifications. Considering the superb performance of DNN and RF classifiers for chemical leak tracking, the proposed method would be very useful for chemical emergency management and is highly recommended for real-time diagnosis of the chemical leak sources.
机译:化工厂泄漏事故被归类为可以传播二级和三级主要灾害的主要工业事故之一。保持跟踪和诊断源地点并迅速通知工厂经理和紧急响应者是非常重要的,以减轻次要和三级损害,从而提高紧急响应的有效性。在这项研究中,我们提出了一种应急响应系统,可以通过监测传感器数据并追踪使用机器学习的疑似泄漏来源来应对化学设备的泄漏事故:深度学习和随机林分类。由于高风险和成本因素,还难以获得足够的化学泄漏事故情景数据或对现实植物进行实际泄漏实验。因此,计算流体动力学(CFD)模拟用于导出用于化学泄漏事故情景的栅栏监测数据。这些数据是培训机器学习模型以预测泄漏源位置。使用R真实化学设备的640个泄漏事故情景,培训了六个时间序列的深神经网络(DNN)结构和三个随机森林(RF)结构,分为训练和测试数据集。结果,在使用25个隐藏层和使用100个决策树的RF模型上的DNN模型,分别实现了75.43%和86.33%的预测精度,分类了40个潜在泄漏源位置的最可能泄漏源。分析错误泄漏的预测泄漏源位置,这些预测的泄漏源也与实际泄漏位置相邻,并且几乎没有称为错误分类。考虑到化学泄漏跟踪的DNN和RF分类器的优化性能,所提出的方法对于化学应急管理是非常有用的,强烈推荐用于实时诊断化学泄漏来源。

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