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Machine fault detection during transient operation using measurement denoising

机译:使用测量降噪在瞬态运行期间检测机器故障

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The paper reports and demonstrates a computationally efficient method for machine fault detection in industrial turbine systems. Empirical mode decomposition (EMD) and Savitzky-Golay smoothing filters are used for signal denoising, with a resulting noise index being developed. By comparing the noise index with a power index (also derived in the paper), obtained from the detection of transients using a spectral analysis of the rate-of-change of unit power, three operational conditions are identifiable viz. normal operation, transient operation and operation when subject to emerging machine faults. The accommodation of transient operational conditions of the unit, so as not to create excessive ‘false alerts’, provides a valuable alternative to more traditional techniques, based on PCA for instance, that can only provide reliable information during steady-state operation. The efficacy of the proposed approaches is demonstrated through the use of experimental trials on sub-15MW gas turbines.
机译:该论文报告并演示了一种用于工业涡轮机系统中机器故障检测的高效计算方法。经验模态分解(EMD)和Savitzky-Golay平滑滤波器用于信号降噪,由此产生了噪声指数。通过将噪声指数与功率指数(也从本文中得出)进行比较,该功率指数是通过使用单位功率变化率的频谱分析检测瞬变而获得的,可以确定三个工作条件。正常运行,瞬态运行以及遇到新出现的机器故障时的运行。为了适应设备瞬态运行条件,以免产生过多的“虚假警报”,它是基于PCA的更传统技术的一种有价值的替代方法,例如PCA只能在稳定状态下运行时提供可靠的信息。通过在15兆瓦以下的燃气轮机上进行试验,证明了所提方法的有效性。

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