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The compensation technique of tensile force effect on the electro-mechanical impedance method for structural health monitoring

机译:张力影响对结构健康监测的机电阻抗法的补偿技术

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In this article, the external axial tension applied on structure was considered in electro-mechanical impedance method. An experiment was performed to study the effect of external axial force on the electro-mechanical impedance-based structural health monitoring. The axial tensions were applied on both healthy and damaged steel beam pasted by surface-bonded piezoelectric transducers. The study results showed that the electrical admittance (the inverse of impedance) curves had an obvious tendency of decline with the increase in tension; thus, this effect would mislead the judgment of health status. Then, the artificial neural network based on radial basis function was introduced to compensate the effect of tension on EMI method. Numerical examples showed that artificial neural network method can prevent the root mean square deviation index from changing with increase in tension. An additional experiment was performed to verify the artificial neural network method. The same conclusion as the first experiment was obtained. The reasonable experiment result demonstrated that artificial neural network method has its generality for application.
机译:本文采用机电阻抗法考虑了施加在结构上的外部轴向张力。进行了一项实验,以研究外部轴向力对基于机电阻抗的结构健康监测的影响。轴向张力既施加在健康的表面,也损坏的表面由压电换能器粘贴在受损的钢梁上。研究结果表明,随着张力的增加,电导率(阻抗的倒数)曲线有明显的下降趋势。因此,这种影响会误导健康状况的判断。然后,引入了基于径向基函数的人工神经网络来补偿张力对EMI方法的影响。数值算例表明,人工神经网络方法可以防止均方根偏差指数随张力的增加而变化。进行了另一个实验,以验证人工神经网络方法。获得与第一个实验相同的结论。合理的实验结果表明,人工神经网络方法具有通用性。

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