Temperature sensor fault diagnosing in heavy duty gas turbines using Laguerre network-based hierarchical fuzzy systems

Ali Chaibakhsh, S. Amirkhani, Pooyan Piredeir
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引用次数: 2

Abstract

This study present an application of Laguerre network-based hierarchical fuzzy modeling approach in fault diagnosis of the temperature sensors in industrial heavy duty gas turbines. The recorded experimental data from the performances of a V94.2 gas turbine unit were employed in modeling stage. A comparison between the responses of the models and real data indicate the capability of the model for long-term prediction of the turbine outlet temperature at different operating conditions. The differences between the models and measured values were defined as the residuals. To deal with uncertainties and disturbances, the thresholds bounds were considered for the residuals. The residuals deviations with respect to threshold boundaries yield to symptoms, which were analyzed in a Takagi-Sugeno fuzzy inference expert system. The performances of fault detection and fault diagnosis system were evaluated by subjecting the sensors to faults. The obtained results show that the faults are successfully detected and diagnosed.
基于Laguerre网络的分层模糊系统在重型燃气轮机温度传感器故障诊断中的应用
研究了基于Laguerre网络的层次模糊建模方法在工业重型燃气轮机温度传感器故障诊断中的应用。建模阶段采用V94.2燃气轮机机组性能实验记录数据。模型的响应与实际数据的对比表明,该模型能够长期预测不同工况下的汽轮机出口温度。模型与实测值之间的差异被定义为残差。为了处理不确定性和干扰,残差考虑了阈值边界。在Takagi-Sugeno模糊推理专家系统中,对阈值边界的残差偏差产生症状进行了分析。通过将传感器置于故障环境中,对故障检测与诊断系统的性能进行评估。结果表明,该方法能够成功地检测和诊断故障。
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