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Sizing of cavity defect in metallic foam from DC potential drop signals with stochastic inversion methods

机译:具有随机反转方法的直流电位下降信号中金属泡沫中腔缺损的尺寸

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This paper focuses on the sizing of cavity defect in metallic foam (MF) from DC potential drop (DCPD) signals with stochastic optimization methods. Reconstruction schemes and numerical examples for reconstruction of the major defect parameters from both simulated and measured DCPD signals are given for the genetic algorithm (GA), the simulated annealing (SA) method, and the tabu search (TS) method respectively. The maximum reconstruction errors are 5.25% for the SA method with numerical signals, and 10.0% for the TS method with experimental signals, while the errors between the signals of MFs with defect of true parameters (or the experimental signals) and reconstructed parameters are small. This means that taking the potential drop signals of the nodes at the midline of the upper surface or the midlines of both the upper surface and the front surface is feasible to reconstruct the major parameters of single cavity defect with these stochastic methods. In addition, the numerical results suggest that the GA is the most efficient one among the selected stochastic inversion methods in terms of both accuracy and robustness, and the SA method is more time-saving.
机译:本文侧重于具有随机优化方法的直流势下降(DCPD)信号中金属泡沫(MF)中腔缺损的尺寸。用于重建用于模拟和测量的DCPD信号的主要缺陷参数的重建方案和数值示例,分别给出了遗传算法(GA),模拟退火(SA)方法和禁忌搜索(TS)方法。对于具有数值信号的SA方法的最大重建误差为5.25%,对于具有实验信号的TS方法的10.0%,而具有真实参数(或实验信号)缺陷的MFS信号与重建参数的误差是小的。这意味着在上表面和前表面的上层或中线的中线处采取节点的潜在落信号是可行的,可以通过这些随机方法重建单腔缺陷的主要参数。此外,数值结果表明,在精度和鲁棒性方面,GA是所选随机反转方法中最有效的,并且SA方法更节省。

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