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A probabilistic visual-flowcharting-based model for consequence assessment of fire and explosion events involving leaks of flammable gases

机译:一种基于概率的视觉流程图,用于涉及易燃气体泄漏的火灾和爆炸事件的后果评估模型

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摘要

Leaks of flammable gases from containing systems pose safety concerns in many industrial settings. In this research, state-of-the-art visual flowcharting methodology is employed to develop a probabilistic model to quantify occupational risks of fire and explosion events initiated by leaks that ignite within enclosed spaces. In this model, leak initiation time and leak type (small, medium, or large) are selected based on user-specified probability distribution function and leak probability ranges, respectively. Other inputs to the model include probability distribution of time to failure of mechanical ventilation in the enclosed space, likelihood of presence of an ignition source with energy = minimum ignition energy (MIE) of formed flammable gas cloud, probability of leak detection prior to ignition, and conditional probabilities of fires and explosions, given ignition. The model checks whether randomly-selected times of leak initiation and ventilation failure are within user-specified mission time. Number of personnel present near leak source is determined by a user-selected probability distribution. Uncertainties of input probabilities are propagated through the model using Monte Carlo sampling technique. Given occurrence of an undetected gaseous leak in conjunction with presence of an ignition source, ventilation failure, and presence of personnel close to the hazard source, the model calculates frequencies of risks of fire or explosion injuries, averaged over 10(6 )Monte Carlo trials per simulation run. Functionality of proposed model is demonstrated by a hydrogen refueling station (HRS) case study in which gaseous hydrogen is postulated to leak from its compressor system. Base case and worst case scenarios as well as sensitivity cases are considered and their simulation results show that, for these postulated scenarios, compressor's small H2 leaks (unlike medium and large leaks) pose intolerable occupational risk frequencies that exceed the acceptable risk level of 1.0E-4/year as well as NFPA's selected risk guideline of 2.0E-5/year which is driven by the comparative risk to gasoline stations. To mitigate predicted occupational risks to acceptable levels, safety control measures and best practices are recommended. The proposed model can be used as a training tool for first responders to fire and explosion events initiated by leaks of flammable gases. The model allows user-specified 'what-if' scenarios with or without risk mitigation measures. In addition to HRS, the model can be applied to a broad range of industrial applications such as natural gas refueling stations, indoor chiller systems which employ flammable refrigerants, and warehouses equipped with hydrogen-powered forklifts. Risk insights from this model's simulations can also support safety codes & standards and root cause investigations of industrial fire and explosion events.
机译:易燃气体泄漏从含有系统的易燃气体在许多工业环境中提出了安全问题。在该研究中,采用最先进的视觉流程图方法来开发概率模型,以量化由封闭空间内点燃的泄漏引发的火灾和爆炸事件的职业风险。在该模型中,根据用户指定的概率分布函数和泄漏概率范围选择泄漏启动时间和泄漏类型(小,介质或大)。模型的其他输入包括概率分布到封闭空间中机械通气失效的时间,具有能量的点火源的可能性。=形成易燃气体云的最小点火能量(mie),泄漏检测概率点火和爆炸的条件概率,给予点火。该模型检查是否在用户指定的任务时间内随机选择的泄漏启动和通风故障。泄漏源附近的人员数由用户选择的概率分布确定。输入概率的不确定性通过使用蒙特卡罗采样技术通过模型传播。给定发生未检测到的气体泄漏的出点源,通风故障和靠近危险源的人员的存在,该模型计算火灾或爆炸损伤风险的频率,平均超过10(6)个蒙特卡罗试验每个模拟运行。所提出的模型的功能由氢气加油站(HRS)壳体研究证明,其中气态氢假设以从其压缩机系统泄漏。考虑基本情况和最坏情况情况以及灵敏度案例以及其仿真结果表明,对于这些假设场景,压缩机的小型H2泄漏(与中型和大泄漏不同)造成超过1.0e可接受风险水平的无法忍受的职业风险频率-4 /年以及NFPA所选择的2.0E-5 /年的风险指南,由汽油站的比较风险驱动。为了减轻预测的职业风险,建议使用安全控制措施和最佳实践。该拟议的模型可用作首先响应者的培训工具,以易燃气体泄漏发起的火灾和爆炸事件。该模型允许用户指定的“什么”方案有或没有风险缓解措施。除了HRS之外,该模型还可以应用于广泛的工业应用,如天然气加油站,使用易燃制冷剂的室内冷却系统,以及配备氢气动力叉车的仓库。该模型模拟的风险见解还可以支持工业火灾和爆炸事件的安全守则和标准和根本原因。

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