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An integrated safety prognosis model for complex system based on dynamic Bayesian network and ant colony algorithm

机译:基于动态贝叶斯网络和蚁群算法的复杂系统集成安全预测模型

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摘要

In complex industrial system, most of single faults have multiple propagation paths, so any local slight deviation is able to propagate, spread, accumulate and increase through system fault causal chains. It will finally result in unplanned outages and even catastrophic accidents, which lead to huge economic losses, environmental contamination, or human injuries. In order to ensure system intrinsic safety and increase operational performance and reliability in a long period, this study proposes an integrated safety prognosis model (ISPM) considering the randomness, complexity and uncertainty of fault propagation.ISPM is developed based on dynamic Bayesian networks to model the propagation of faults in a complex system, integrating the priori knowledge of the interactions and dependencies among subsystems, components, and the environment of the system, as well as the relationships between fault causes and effects. So the current safety state and potential risk of system can be assessed by locating potential hazard origins and deducing corresponding possible consequences. Furthermore, ISPM is also developed to predict the future degradation trend in terms of future reliability or performance of system, and provide proper proactive maintenance plans. Ant colony algorithm is introduced in ISPM by comprehensively considering two factors as probability and severity of faults, to perform the quantitative risk estimation of the underlining system. The feasibility and benefits of ISPM are investigated with a field case study of gas turbine compressor system. According to the outputs given by ISPM in the application, proactive maintenance, safety-related actions and contingency plans are further discussed and then made to keep the system in a high reliability and safety level in the long term.
机译:在复杂的工业系统中,大多数单个故障具有多个传播路径,因此任何局部轻微偏差都可以通过系统故障因果链进行传播,扩散,累积和增加。最终将导致计划外的中断甚至灾难性事故,从而导致巨大的经济损失,环境污染或人身伤害。为了保证系统的本质安全并在较长时间内提高运行性能和可靠性,本研究提出了一种基于故障传播的随机性,复杂性和不确定性的综合安全预测模型(ISPM).ISPM是基于动态贝叶斯网络进行建模的故障在复杂系统中的传播,集成了子系统,组件和系统环境之间的交互作用和依存关系的先验知识,以及故障原因和影响之间的关系。因此,可以通过定位潜在的危险源并推断相应的可能后果来评估当前的安全状态和系统的潜在风险。此外,还开发了ISPM以根据系统的未来可靠性或性能预测未来的降级趋势,并提供适当的主动维护计划。综合考虑故障的概率和严重性两个因素,将蚁群算法引入ISPM中,对下划线系统进行定量风险估计。通过对燃气轮机压缩机系统的现场案例研究,研究了ISPM的可行性和收益。根据ISPM在应用程序中提供的输出,将进一步讨论主动维护,与安全相关的措施和应急计划,然后制定长期计划,以使系统保持较高的可靠性和安全性。

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