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Fault Diagnosis Improvement Using Dynamic Fault Model in Optimal Sensor Placement: A Case Study of Steam Turbine

机译:动态故障模型在传感器最佳布置中的故障诊断改进-以汽轮机为例

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摘要

Health data are collected dominantly through sensors mounted on different locations in the system. Optimization of sensor network has a significant influence on the reliability of system health prognostics process. In this research, the effect of sensors reliability is studied on their placement optimization. Sensors are considered in this study as components in system failure model. This study is aimed to use Priority AND' gate for evaluating the effect of time dependencies of sensors as well as components failure on the optimal sensor placement. Because of that, PAND gate is added to the fault tree between all sensors and their corresponding components to develop the failure model of each sensor placement scenario. For calculating the probability of top event, a Monte Carlo-based algebraic approach is proposed. In algebraic approach, temporal operator BEFORE' is proposed for calculating the probability of PAND' gate. The result of using BEFORE' operator is an analytical solution for probability of each cut sequence. Because of the complexity of analytical solution in practical problems, a Monte Carlo simulation is utilized on the solution in this research. Then the probability of each cut sequence is calculated. Consequently, the probability of top event for each scenario is obtained. Finally, all scenarios are ranked based on top event probabilities. As a case study, optimization of sensor placement has been demonstrated on steam turbine and results are discussed. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:健康数据主要通过安装在系统中不同位置的传感器收集。传感器网络的优化对系统健康预测过程的可靠性有重要影响。在这项研究中,研究了传感器可靠性对其放置优化的影响。在这项研究中,传感器被视为系统故障模型的组成部分。这项研究旨在使用优先级AND'门来评估传感器的时间依赖性以及组件故障对最佳传感器放置的影响。因此,将PAND门添加到所有传感器及其对应组件之间的故障树中,以开发每种传感器放置场景的故障模型。为了计算最高事件的概率,提出了一种基于蒙特卡洛的代数方法。在代数方法中,提出了时间算符BEFORE'来计算PAND'门的概率。使用BEFORE'运算符的结果是每个剪切序列的概率的解析解决方案。由于实际问题中解析解决方案的复杂性,本研究在解决方案上使用了蒙特卡洛模拟。然后计算每个剪切序列的概率。因此,可以获得每种情况下发生重大事件的概率。最后,所有场景均基于最高事件概率进行排名。作为案例研究,已经在蒸汽轮机上证明了传感器位置的优化,并讨论了结果。版权所有(c)2016 John Wiley&Sons,Ltd.

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