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Feature Analysis Mechanical Fault Signals Based on Correlation Dimension and Complexity

机译:基于相关维数和复杂度的机械故障信号特征分析

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In connection with the nonlinear dynamic characteristics shown from the performance of fault rotating mechanical system, based on the research and analysis, correlation dimension and complexity can be used to characterize the system state of motion. The authors propose the analysis method of correlation dimension and complexity to the signal feature of mechanical fault. Using theory of phase space reconstruction, simulating fault signal of rotating machine is reconstructed. In order to reconstruct the phase space which can be adequately reflect the movement characteristics of the system, the time delay and embedding dimension are discussed emphatically, on this basis, the correlation dimension are calculated. From the analysis and calculation on simulation of different fault signals, it shows that under different rotating machinery fault conditions, its correlation dimension, and complexity are significantly different, which verifies that the these nonlinear feature quantities are effective parameters for fault information and they are excellent parameters in terms of extraction and recognition of fault feature. Studies have shown that, these nonlinear feature quantities can reflect the nonlinearity of the system. If combine these parameters, supplemented mutually, verifies mutually, it will be more conducive to recognize and analyze fault signal recognition, enhance the reliability, and thus to study the fault diagnosis of complexity rotating machinery in a more effective way.
机译:结合故障旋转机械系统性能表现出的非线性动力学特性,在研究和分析的基础上,可以利用相关维数和复杂度来表征系统的运动状态。作者提出了与机械故障信号特征相关的维数和复杂度的分析方法。利用相空间重构理论,对旋转电机的故障信号进行仿真重构。为了重构能充分反映系统运动特性的相空间,着重讨论了时延和嵌入维数,并在此基础上计算了相关维数。通过对不同故障信号仿真的分析和计算表明,在不同的旋转机械故障条件下,其相关维数和复杂度存在显着差异,验证了这些非线性特征量是故障信息的有效参数,具有良好的应用前景。提取和识别故障特征方面的参数。研究表明,这些非线性特征量可以反映系统的非线性。如果将这些参数结合起来,相互补充,相互验证,将更有利于识别和分析故障信号识别,提高可靠性,从而更有效地研究复杂旋转机械的故障诊断。

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