IEEE Trans Ultrason Ferroelectr Freq Control. 2013 Oct;60(10):2089-97. doi: 10.1109/TUFFC.2013.2799.
Compressive sensing (CS) has emerged as a potentially viable technique for the efficient compression and analysis of high-resolution signals that have a sparse representation in a fixed basis. In this work, we have developed a CS approach for ultrasonic signal decomposition suitable to achieve high performance in Lamb-wave-based defect detection procedures. In the proposed approach, a CS algorithm based on an alternating minimization (AM) procedure is adopted to extract the information about both the system impulse response and the reflectivity function. The implemented tool exploits the dispersion compensation properties of the warped frequency transform as a means to generate the sparsifying basis for the signal representation. The effectiveness of the decomposition task is demonstrated on synthetic signals and successfully tested on experimental Lamb waves propagating in an aluminum plate. Compared with available strategies, the proposed approach provides an improvement in the accuracy of wave propagation path length estimation, a fundamental step in defect localization procedures.
压缩感知 (CS) 已成为一种在固定基上具有稀疏表示的高分辨率信号的高效压缩和分析的潜在可行技术。在这项工作中,我们开发了一种适用于超声信号分解的 CS 方法,以在基于兰姆波的缺陷检测过程中实现高性能。在所提出的方法中,采用基于交替最小化 (AM) 过程的 CS 算法来提取关于系统脉冲响应和反射率函数的信息。所实现的工具利用扭曲频率变换的色散补偿特性作为生成信号表示稀疏基的手段。分解任务的有效性在合成信号上得到了验证,并在铝板中传播的实验兰姆波上成功进行了测试。与现有策略相比,所提出的方法在缺陷定位过程中对波传播路径长度估计的准确性有了提高。