Machine fault detection during transient operation using measurement denoising

Yu Zhang, C. Bingham, M. Gallimore, Zhijing Yang, Jun Chen
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引用次数: 4

Abstract

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.
利用测量去噪技术进行机器暂态故障检测
本文报道并演示了一种计算效率高的工业汽轮机系统故障检测方法。经验模态分解(EMD)和Savitzky-Golay平滑滤波器用于信号去噪,由此产生的噪声指数正在开发中。通过比较噪声指数和功率指数(也是本文推导的),通过对单位功率变化率的频谱分析来检测暂态,可以识别出三种运行状态,即正常运行、暂态运行和机器出现故障时的运行。适应机组的暂态运行条件,以避免产生过多的“错误警报”,为更传统的技术提供了一个有价值的替代方案,例如基于PCA的技术,只能在稳态运行期间提供可靠的信息。通过在低于15mw的燃气轮机上进行实验试验,证明了所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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