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Probabilistic failure analysis of hot gas path in a heavy-duty gas turbine using Bayesian networks

机译:基于贝叶斯网络的重型燃气轮机热气路径概率故障分析

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摘要

Heavy-duty gas turbines are usually devised in power plants to generate electrical energy. Sudden failure in any of its parts or subdivisions will result in a decrement of the efficiency of the system or emergency shutdown of the system. The highest risk of failure in these turbines is subjected to the hot gas path (HGP) of the turbine. Due to the existence of uncertainty in diagnosing process or damage growth, in this research, a modified risk-based probabilistic failure analysis model using Bayesian networks (BN) was developed. First, a failure model was developed using the Fault Tree Analysis, and then it is transformed into a BN model. This model is capable of predicting and diagnosing critical components and critical failure modes and mechanisms for each component by updating failure probabilities. Moreover, in order to enhance the application of the proposed model and to identify the risk factors, the sensitivity analysis of the HGP components is presented with applying definitions of importance measures and extend them to BN. The sensitivity analysis and application of its results for making decisions during the system operation will enhance the reliability and safety of the system.
机译:重型燃气轮机通常在发电厂中设计以产生电能。它的任何部分或分区突然发生故障都将导致系统效率下降或系统紧急关闭。这些涡轮机出现故障的最高风险是受到涡轮机的热气路径(HGP)的影响。由于诊断过程中存在不确定性或损害增长,因此在本研究中,开发了使用贝叶斯网络(BN)的改进的基于风险的概率故障分析模型。首先,使用故障树分析开发故障模型,然后将其转换为BN模型。该模型能够通过更新故障概率来预测和诊断关键组件以及每个组件的关键故障模式和机制。此外,为了增强所提出模型的应用并确定风险因素,对HGP组件进行了敏感性分析,并应用了重要度量的定义并将其扩展到了BN。在系统运行期间进行决策的敏感性分析及其结果的应用将增强系统的可靠性和安全性。

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