自适应顺序跟踪技术在旋转机械分析中的比较研究:计算机实验与实际应用

IF 0.5 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
D. Veljković, P. Todorovic
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引用次数: 0

摘要

本文提出并研究了基于最小均方法(LMS)和单极结构方程的Vold-Kalman (VK)算法的递推阶跟踪(OT)技术,这两种技术均可实现实时应用。此外,为了进行比较,考虑了两种常见的自适应OT滤波器:递归最小二乘(RLS)方法和具有两极结构方程的VK算法。通过对具有代表性的含噪声合成信号(包括近阶和交叉阶谱分量)的仿真,对所考虑的方法进行了数值实现。结果表明,RLS算法的跟踪性能可能会下降,而简单的LMS方法以及两种考虑的VK算法在OT和区分方面的有效性可能会下降。进一步研究了采样频率对VK递归OT滤波器权重因子选择的影响,将文献中的准则扩展到…
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Study of Adaptive Order Tracking Techniques for Rotating Machinery Analysis: Computer Experiments and Practical Implementations
This paper presents and investigates recursive order tracking (OT) techniques based on the least mean-square (LMS) method and the Vold–Kalman (VK) algorithm with a one pole structural equation, both of which could be realized as real-time applications. Additionally, for comparisons, two common adaptive OT filters are considered: the recursive least-squares (RLS) method and the VK algorithm with a two pole structural equation. The numerical implementations of the considered methods, through simulations on a representative noisy synthetic signal, including both close and crossing orders spectral components, are performed. The results indicate a possible degradation in the tracking performance of the RLS algorithm and the effectiveness of the simple LMS method, as well as both considered VK algorithms, for OT and distinguishing. The influence of the sampling frequency on the choosing of a weighting factor for the VK recursive OT filters is further investigated to extend the guidelines from the literature for...
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来源期刊
Advances in Data Science and Adaptive Analysis
Advances in Data Science and Adaptive Analysis MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
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