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A parameter-optimized variational mode decomposition method using salp swarm algorithm and its application to acoustic-based detection for internal defects of arc magnets

机译:一种使用SALP群算法的参数优化的变分模式分解方法及其在基于声学检测的弧形磁铁内部缺陷的应用

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The acoustic-based detection is regarded as an effective way to detect the internal defects of arc magnets. Variational mode decomposition (VMD) has a significant potential to provide a favorable acoustic signal analysis for such detection. However, the performance of VMD heavily depends on the proper parameter setting. The existing optimization methods for determining the optimal VMD parameter setting still expose shortcomings, including slow convergences, excessive iterations, and local optimum traps. Therefore, a parameter-optimized VMD method using the salp swarm algorithm (SSA) is proposed. In this method, the relationship between the VMD parameters and their decomposition performance is quantified as a fitness function, the minimum value of which indicates the optimal parameter setting. SSA is used to search for such a minimum value from the parameter space. With the optimized parameters, each signal can be decomposed accurately into a series of modes representing signal components. The center frequencies are extracted from the selected modes as feature data, and their identification is performed by random forest. The experimental results demonstrated that the detection accuracy is above 98%. The proposed method has superior performance in the VMD parameter optimization as well as the acoustic-based internal defect detection of arc magnets.
机译:基于声学的检测被认为是检测电弧磁体的内部缺陷的有效方法。变分模式分解(VMD)具有显着的电位,以便为这种检测提供有利的声学信号分析。但是,VMD的性能大量取决于适当的参数设置。用于确定最佳VMD参数设置的现有优化方法仍然暴露缺点,包括缓慢的收敛,过度迭代和局部最佳陷阱。因此,提出了使用SALP Swarm算法(SSA)的参数优化的VMD方法。在该方法中,VMD参数与其分解性能之间的关系量化为适合函数,其最小值表示最佳参数设置。 SSA用于搜索来自参数空间的这种最小值。利用优化的参数,每个信号可以精确地分解成一系列表示信号分量的模式。中心频率从所选择的模式提取为特征数据,并且它们的识别由随机林执行。实验结果表明,检测精度高于98%。所提出的方法在VMD参数优化中具有卓越的性能以及电弧磁体的基于声学的内部缺陷检测。

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