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Fault Detection and Isolation Based on Neural Networks Case Study: Steam Turbine

机译:基于神经网络的故障检测与隔离案例研究:汽轮机

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The real-time fault diagnosis system is very important for steam turbine generator set due serious fault results in a reduced amount of electricity supply in power plant. A novel real-time fault diagnosis system is proposed by using Levenberg-Marquardt algorithm related to tuning parameters of Artificial Neural Network (ANN). The model of novel fault diagnosis system by using ANN are built and analyzed. Cases of the diagnosis are simulated. The results show that the real-time fault diagnosis system is of high accuracy and quick convergence. It is also found that this model is feasible in real-time fault diagnosis. The steam turbine is used as a power generator by SONELGAZ, an Algerian company located at Cap Djinet town in Boumerdes district. We used this turbine as our main target for the purpose of this analysis. After deep investigation, while keeping our focus on the most sensitive parts within the turbine, the weakest and the strongest points of the system were identified. Those are the points mostly adequate for failure simulations and at which the designed system will be better positioned for irregularities detection during the production process.
机译:实时故障诊断系统对于汽轮发电机组非常重要,因为严重的故障会导致电厂的电力供应减少。利用与人工神经网络(ANN)参数调整相关的Levenberg-Marquardt算法,提出了一种新颖的实时故障诊断系统。建立并分析了基于神经网络的新型故障诊断系统模型。模拟诊断情况。结果表明,该实时故障诊断系统具有较高的精度和收敛速度。还发现该模型在实时故障诊断中是可行的。蒸汽轮机由位于邦默德斯区Cap Djinet镇的阿尔及利亚公司SONELGAZ用作发电机。为了进行分析,我们以该涡轮机为主要目标。经过深入研究,我们将重点放在涡轮机内最敏感的部分上,同时确定了系统的最弱点和最强点。这些是最适合进行故障模拟的点,在这些点上,可以更好地定位设计的系统,以在生产过程中检测异常情况。

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