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Condition monitoring of rotating machines under time-varying conditions based on adaptive canonical variate analysis

机译:基于自适应典型变量分析的时变条件下的旋转机械状态监测

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Condition monitoring signals obtained from rotating machines often demonstrate a highly non-stationary and transient nature due to internal natural deterioration characteristics of their constituent components and external time-varying operational conditions. Traditional multivariate statistical monitoring approaches are based on the assumption that the underlying processes are linear and static and are apt to interpret the normal changes in operating conditions as faults, which would result in high false positive rates. On the other hand, the development of robust diagnostic techniques for the detection of incipient faults remains a challenge for researchers, given the difficulty of finding an appropriate trade-off between a low false positive ratio and early detection of emerging faults. To address these issues, this paper proposes a novel adaptive fault detection approach based on the canonical residuals (CR) induced by the combination of canonical variate analysis (CVA) and matrix perturbation theory for the monitoring of dynamic processes where variations in operating conditions are incurred. The canonical residuals are calculated based upon the distinctions between past and future measurements and are able to effectively detect emerging faults while still maintaining a low false positive rate. The effectiveness of the developed diagnostic model for the detection of abnormalities in industrial processes was demonstrated for slow involving faults in case studies of two operational industrial high-pressure pumps. In comparison with the variable-based and canonical correlation-based statistical monitoring approaches, the proposed canonical residuals-adaptive canonical variate analysis (CR-ACVA) fault detection method has demonstrated its superiorities by the detailed performance comparisons. (C) 2019 Elsevier Ltd. All rights reserved.
机译:由于其组成部件的内部自然退化特性和外部时变操作条件,从旋转机器获得的状态监视信号通常表现出高度的非平稳和瞬态特性。传统的多变量统计监视方法基于以下假设:基本过程是线性和静态的,并且易于将操作条件的正常变化解释为故障,这将导致较高的误报率。另一方面,由于难以在低误报率和早期检测新兴故障之间找到适当的取舍,因此开发用于检测早期故障的强大诊断技术仍然是研究人员面临的挑战。为了解决这些问题,本文提出了一种新的自适应故障检测方法,该方法基于规范变量分析(CVA)和矩阵扰动理论相结合而产生的规范残差(CR)来监控动态过程,这些动态过程会监测工作条件的变化。规范残差是根据过去和将来的测量值之间的差异计算得出的,能够有效地检测出正在出现的故障,同时仍保持较低的误报率。在两个可操作的工业高压泵的案例研究中,证明了所开发的诊断模型对工业过程中异常的检测的有效性,可有效地解决缓慢涉及的故障。与基于变量和基于规范相关性的统计监视方法相比,所提出的规范残差自适应规范变异分析(CR-ACVA)故障检测方法通过详细的性能比较证明了其优越性。 (C)2019 Elsevier Ltd.保留所有权利。

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