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Gas Turbine Shaft Unbalance Fault Detection By Using Vibration Data And Neural Networks

机译:燃气轮机轴不平衡故障检测使用振动数据和神经网络

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This study presents fault detection of a heavy duty V94.2 gas turbine which has 162.1 MW nominal power and 50 Hz nominal frequency and is located at Pareh Sar power plant, Gilan, Iran. For this purpose stored data include measurements of relative and absolute vibration of shaft bearings in both turbine and compressor sections. Signal processing techniques and mathematical transformations are used for feature extraction, as well as supervised and unsupervised methods for dimensionality reduction. Finally neural networks are employed for classification task and fault detection results for different methods are compared and discussed. Proposed techniques show zero FAR and MAR, when PNN is used with PCA or when MLP or RBF is used with LDA for dimensionality reduction.
机译:本研究提出了重型V94.2燃气轮机的故障检测,其具有162.1 MW标称功率和50 Hz标称频率,位于Pareh Sar Power厂,伊朗吉兰。为此目的,存储的数据包括涡轮机和压缩机部分中的轴轴承的相对和绝对振动的测量。信号处理技术和数学转换用于特征提取,以及监督和无监督的维度减少方法。最后,对神经网络用于分类任务和故障检测结果,对不同方法进行比较和讨论。当PNN与PCA一起使用时,所提出的技术显示零远和MAR,或者当MLP或RBF与LDA一起使用时,LDA用于维度降低。

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