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Study on the Identification of Experimental Chaotic Vibration Signal for Nonlinear Vibration Isolation System

机译:非线性隔振系统实验混沌振动信号识别的研究

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摘要

In order to identify experimental chaotic vibration signals correctly, the measured data were analyzed by applying the methods of Poincaré section, return map, and phase space reconstruction. However, the nonlinear time series analysis based on phase space reconstruction is complex and time-consuming for large quantities of experimental signals. Besides, especially when the signal identification process should be completed online, the conventional method is unable to meet the requirements. The energy distribution features of signals in different frequency bands were extracted with the wavelet package analysis method, and the important characteristic vectors for chaos identification were provided. These methods were verified with numerical simulation first in this paper. Then, the nonlinear vibration system based on an air spring isolator was designed, which exhibits different responses with different parameters. In the experiment, the wavelet package technology and neural network were applied to identify the system behavior; results showed that the vibration system exhibited chaotic responses under special parameter ranges, and the parameter variation law was concluded, which is the foundation of linear spectra isolation for chaotic vibration control technology.
机译:为了正确识别实验中的混沌振动信号,采用庞加莱剖面,回波图和相空间重构的方法对实测数据进行了分析。然而,对于大量的实验信号,基于相空间重构的非线性时间序列分析既复杂又费时。此外,特别是当信号识别过程需要在线完成时,传统方法无法满足要求。利用小波包分析方法提取了不同频段信号的能量分布特征,为混沌识别提供了重要的特征向量。本文首先通过数值模拟验证了这些方法。然后,设计了基于空气弹簧隔振器的非线性振动系统,该系统在不同参数下表现出不同的响应。实验中,采用小波包技术和神经网络识别系统行为。结果表明,振动系统在特定参数范围内表现出混沌响应,得出了参数变化规律,为混沌振动控制技术的线性谱隔离奠定了基础。

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