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State recognition of viscoelastic sandwich structures based on permutation entropy and generalized Chebyshev support vector machine

机译:基于排列熵和广义Chebyshev支持向量机的国家识别粘弹性夹层结构

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Viscoelastic sandwich structures are widely used in mechanical equipment, yet viscoelastic materials always suffer from aging which changes the dynamic characteristics of the structure and affects the whole performance of the equipment. Therefore, state recognition of viscoelastic sandwich structures is very necessary for monitoring structural health states and keeping the equipment running reliably. Considering the high nonlinearity on the dynamic characteristics and the strong non-stationarity of vibration response signals, a novel method based on permutation entropy (PE) and generalized Chebyshev support vector machine (GCSVM) is proposed in this paper. For obtaining more effective state information, redundant second generation wavelet packet transform is firstly used to process the non-stationary vibration response signals, and then PE features are extracted from the resultant wavelet packet coefficients to reveal the changes of the nonlinear dynamic characteristics. Aiming at improving the generalization ability of SVM, based on generalized Chebyshev kernel, the GCSVM is introduced to classify the various structural states. In order to demonstrate the effectiveness of the proposed method, different structural states are created by the accelerated aging experiment of viscoelastic material. The testing results show that the proposed method is effective for state recognition of viscoelastic sandwich structures, which has more strong generalization ability and can achieve higher recognition accuracy than that of the wavelet SVM.
机译:粘弹性夹层结构广泛用于机械设备,但粘弹性材料总是遭受老化,改变结构的动态特性,并影响设备的整体性能。因此,对粘弹性夹层结构的状态识别非常需要监测结构健康状态并保持设备可靠地运行。考虑到动态特性的高非线性和振动响应信号的强不良性,本文提出了一种基于排列熵(PE)和广义Chebyshev支持向量机(GCSVM)的新型方法。为了获得更有效的状态信息,首先用于处理非静止振动响应信号的冗余第二代小波分组变换,然后从得到的小波包系数中提取PE特征以露出非线性动态特性的变化。旨在提高SVM的泛化能力,基于广义Chebyshev内核,引入GCSVM以分类各种结构状态。为了证明所提出的方法的有效性,通过加速粘弹性的衰老试验来产生不同的结构状态。测试结果表明,该方法对于国家识别粘弹性夹层结构是有效的,其具有更强的泛化能力,并且可以实现比小波SVM更高的识别精度。

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