基于EMD和PNN的工业机器人非平稳随机振动环境分析

Hai Yang, Hong Zhu, Yefeng Liu, Yuan Zhao
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引用次数: 0

摘要

针对工业机器人加工过程中非平稳随机振动信号的频率密度特点,提出了基于经验模态分解(EMD)的多分量过程神经网络(PNN)自回归模型。首先,利用EMD将原始时间序列分解为不同尺度的内禀模态函数(IMF);然后利用PNN对各IMF的时变参数进行分析,确定时变功率谱密度;最后,通过线性叠加将各分量的时变独立功率谱密度重构为原始信号的时变独立功率谱密度。计算结果表明,该方法的频率分辨性能优于传统的分析方法。
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Analysis of non-stationary random vibration environment of industrial robot based on EMD and PNN
Aiming at the characteristic of frequency density of non-stationary random vibration signals of industrial robots during machining, a multi-component process neural network (PNN) auto-regressive model was proposed based on empirical mode decomposition (EMD). First, the original time series were decomposed into intrinsic mode functions (IMF) of different scales by EMD. Then, the time-varying parameters of each IMF were analyzed by PNN and the time-varying power spectral density was determined. Finally, the time-varying independent power spectral density of all components is reconstructed by linear superposition as the time-varying independent power spectral density of the original signal. The calculation results show that the frequency resolution performance of this method is better than that of traditional analysis method.
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