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Integration of simulation and Markov Chains to support Bayesian Networks for probabilistic failure analysis of complex systems

机译:仿真和马尔可夫链的集成支持贝叶斯网络概念网络概率故障分析复杂系统

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Development of failure analysis techniques for complex engineering systems is evolving rapidly. Complexity in these systems refers to the complex interrelations among system components, variables, factors, and parameters as well as the large number of components to include in the study. It is not an easy task to include all interrelationships of a complex system into one representation. New dynamic and uncertain factors affecting engineering systems, like climate change, new technologies, and new uses, make it clear that the water reservoir systems operations and performance are under probabilistic inputs from many different factors. This means that failure of such systems should be assessed using multidisciplinary probabilistic uncertainty measures. Bayesian Networks (BNs) provide a flexible way of representing such complex systems and their interrelating components probabilistically and in a single unified representation. Compared to other techniques such as fault tree and event tree analyses methods, BN is useful in representing complex networks that have multiple events and different types of variables in one representation, with the ability to predict the effects, or diagnose the causes leading to a certain effect. In this paper, two proposed methodologies are developed to support BNs in dealing with the failure analysis of complex engineering systems, i.e. Simulation Supported Bayesian Networks (SSBNs), and Markov Chain Simulation Supported Bayesian Networks (MCSSBNs). For complex networks, whose failures are affected by a large number of uncertain interconnected variables, these proposed methods are used for efficiently predicting failure probabilities. Compared to exhaustive simulation, the new tools have the distinction of decomposing the complex system into many sub-systems, which makes it easier for understanding the network and faster for simulating the entire network while taking multiple operation scenarios into consideration. The efficiency of these techniques is demonstrated through their application to a pilot system of two dam reservoirs, where the results of SSBNs and MCSSBNs are compared with those of the simulation of entire system operations.
机译:复杂工程系统的故障分析技术的开发迅速发展。这些系统中的复杂性是指系统组件,变量,因素和参数以及在研究中包含的大量组件之间的复杂相互关系。将复杂系统的所有相互关系包含在一个表示中不是一项容易的任务。影响工程系统的新型动态和不确定因素,如气候变化,新技术和新用途,使得水库系统的运营和性能符合许多不同因素的概率投入。这意味着应使用多学科概率的不确定性措施来评估这种系统的失败。贝叶斯网络(BNS)提供了一种灵活的方式,其代表如此复杂的系统及其相互关联的组件,并且在单一的统一表示中。与其他技术(如故障树和事件树分析)相比,BN在代表一个表示中表示具有多个事件和不同类型变量的复杂网络,具有预测效果的能力,或诊断导致某个原因的能力影响。在本文中,开发了两种提出的方​​法来支持BNS,用于处理复杂工程系统的故障分析,即模拟支持的贝叶斯网络(SSBNS),Markov链模拟支持贝叶斯网络(MCSSBNS)。对于复杂的网络,其故障受到大量不确定互连变量的影响,这些所提出的方法用于有效地预测失效概率。与详尽的仿真相比,新工具的区别在许多子系统中分解复杂系统,这使得在考虑多个操作场景时模拟整个网络更容易理解网络和更快的速度。通过应用于两个坝储存器的试验系统来证明这些技术的效率,其中SSBNS和MCSSBNS的结果与整个系统操作的模拟相比。

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