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The real-time estimation of hazardous gas dispersion by the integration of gas detectors, neural network and gas dispersion models

机译:通过集成气体检测器,神经网络和气体扩散模型实时估算有害气体扩散

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Release of hazardous materials in chemical industries is a major threat to surrounding areas. Current gas dispersion models like PHAST and FLACS, use release velocity, release elevation, meteorological parameters, and other related information as model input. In general, such information is not always available during an on-going accident. In this paper, we develop a fast prediction approach which could bypass the input parameters that are difficult to obtain and predict the released gas concentration at certain off-site location using parameters that could be obtained easily. The new approach is an integration of gas detectors, artificial neural network (ANN) and one of the aforementioned gas dispersion models. PHAST is applied to simulate numbers of release scenarios and the results containing the spatial and temporal distributions of released gas concentration are prepared as input and target data samples for training the neural network. The approach was applied to a case study involving a hypothetical chlorine release with varying release rates and atmospheric conditions. The results of the approach that are concentration and dispersion time profiles in the environmental sensitive locations were validated against PHAST. The validation shows highly correlations with PHAST and convincingly demonstrates the effectiveness of the proposed approach. (C) 2015 Elsevier B.V. All rights reserved.
机译:化学工业中有害物质的释放是对周边地区的主要威胁。当前的气体扩散模型(例如PHAST和FLACS)使用释放速度,释放高度,气象参数和其他相关信息作为模型输入。通常,在持续的事故期间并非总是可以获得此类信息。在本文中,我们开发了一种快速预测方法,该方法可以绕过难以获得的输入参数,并使用易于获得的参数来预测某些异地位置的释放气体浓度。新方法是将气体检测器,人工神经网络(ANN)和上述气体扩散模型之一集成在一起。 PHAST用于模拟释放情景的数量,并且准备了包含释放气体浓度的时空分布的结果作为用于训练神经网络的输入和目标数据样本。该方法被应用于一个案例研究,该案例涉及假设的氯释放,其释放速率和大气条件各不相同。该方法的结果是在环境敏感位置的浓度和分散时间分布图,已针对PHAST进行了验证。验证显示与PHAST高度相关,并令人信服地证明了所提出方法的有效性。 (C)2015 Elsevier B.V.保留所有权利。

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