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基于遗传优化的稀疏超声信号最大后验反卷积

Maximum a posteriori deconvolution of sparse ultrasonic signals using genetic optimization.

作者信息

Olofsson T, Stepinski T

机构信息

Department of Material Science, Uppsala University, Sweden.

出版信息

Ultrasonics. 1999 Sep;37(6):423-32. doi: 10.1016/s0041-624x(99)00019-0.

Abstract

Deconvolution of sparse spike sequences has received much attention in the field of seismic exploration. In certain situations in ultrasonic non-destructive testing (NDT) of materials, similar conditions as those found in seismic exploration occur. One example is the problem of detecting disbonds in layered aluminum structures. The reflection sequence convolved with the impulse response of the transducer results in masking closely spaced reflections. Deconvolution of these signals may reveal the reflection sequence and thus make the interpretation easier. In this paper we use the Bernoulli-Gaussian (BG) distribution for modeling the signal generation. This relatively simple model allows maximum a posteriori (MAP) estimation of the reflection sequence. A derivation of the MAP criterion is given for clarity. We propose a genetic algorithm for optimizing the MAP criterion. The genetic algorithm approach is motivated by the fact that the criterion is non-convex, implying that the criterion may have more than one local minimum point. The probability of obtaining the global optimal solution is increased by using the proposed genetic algorithm. One of the key features in genetic algorithms, the so-called cross-over operator, has been modified and adapted to the structure of the BG deconvolution problem to improve the efficiency of the search. The algorithm is tested on simulated data using the probability of detection (PD) and probability of false alarm (PFA) as evaluation criteria. The algorithm is also tested on real ultrasonic data from a layered aluminum structure. The results show considerable improvements in the possibility of interpreting the signals.

摘要

稀疏脉冲序列的反褶积在地震勘探领域受到了广泛关注。在材料的超声无损检测(NDT)的某些情况下,会出现与地震勘探中类似的条件。一个例子是检测层状铝结构中的脱粘问题。与换能器的脉冲响应卷积后的反射序列会导致紧密间隔的反射被掩盖。对这些信号进行反褶积可能会揭示反射序列,从而使解释更容易。在本文中,我们使用伯努利 - 高斯(BG)分布对信号生成进行建模。这个相对简单的模型允许对反射序列进行最大后验(MAP)估计。为了清晰起见,给出了MAP准则的推导。我们提出了一种遗传算法来优化MAP准则。采用遗传算法的动机是该准则是非凸的,这意味着该准则可能有多个局部最小点。使用所提出的遗传算法增加了获得全局最优解的概率。遗传算法的关键特征之一,即所谓的交叉算子,已经被修改并适应了BG反褶积问题的结构,以提高搜索效率。该算法以检测概率(PD)和误报概率(PFA)作为评估标准在模拟数据上进行了测试。该算法还在来自层状铝结构的真实超声数据上进行了测试。结果表明在信号解释的可能性方面有了显著改进。

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