IEEE Trans Ultrason Ferroelectr Freq Control. 2023 Jun;70(6):538-550. doi: 10.1109/TUFFC.2023.3266719. Epub 2023 May 25.
Phased array ultrasonic testing (PAUT) based on full matrix capture (FMC) has recently been gaining popularity in the scientific and nondestructive testing communities. FMC is a versatile acquisition method that collects all the transmitter-receiver combinations from a given array. Furthermore, when postprocessing FMC data using the total focusing method (TFM), high-resolution images are achieved for defect characterization. Today, the combination of FMC and TFM is becoming more widely available in commercial ultrasonic phased array controllers. However, executing the FMC-TFM method is data-intensive, as the amount of data collected and processed is proportional to the square of the number of elements of the probe. This shortcoming may be overcome using a sparsely populated array in transmission followed by an efficient compression using compressive sensing (CS) approaches. The method can therefore lead to a massive reduction of data and hardware requirements and ultimately accelerate TFM imaging. In the present work, a CS methodology was applied to experimental data measured from samples containing artificial flaws. The results demonstrated that the proposed CS method allowed a reduction of up to 80% in the volume of data while achieving adequate FMC data recovery. Such results indicate the possibility of recovering experimental FMC signals using sampling rates under the Nyquist theorem limit. The TFM images obtained from the FMC, CS-FMC, and sparse CS approaches were compared in terms of contrast-to-noise ratio (CNR). It was seen that the CS-FMC combination produced images comparable to those acquitted using the FMC. Implementation of sparse arrays improved CS reconstruction times by up to 11 folds and reduced the firing events by approximately 90%. Moreover, image formation was accelerated by 6.6 times at the cost of only minor image quality degradation relative to the FMC.
基于全矩阵捕获(FMC)的相控阵超声检测(PAUT)最近在科学和无损检测领域越来越受欢迎。FMC 是一种多功能的采集方法,可从给定的阵列中收集所有的发射器-接收器组合。此外,当使用全聚焦方法(TFM)对 FMC 数据进行后处理时,可以实现用于缺陷特征描述的高分辨率图像。如今,FMC 和 TFM 的组合在商业超声相控阵控制器中越来越普及。然而,执行 FMC-TFM 方法是数据密集型的,因为所采集和处理的数据量与探头元件数量的平方成正比。这一缺点可以通过在传输中使用稀疏填充的阵列并使用压缩感知(CS)方法进行有效的压缩来克服。因此,该方法可以极大地减少数据和硬件需求,并最终加速 TFM 成像。在本工作中,CS 方法应用于包含人工缺陷的样品测量的实验数据。结果表明,所提出的 CS 方法允许数据量减少高达 80%,同时实现了对 FMC 数据的充分恢复。这些结果表明,有可能使用低于奈奎斯特定理极限的采样率来恢复实验 FMC 信号。从 FMC、CS-FMC 和稀疏 CS 方法获得的 TFM 图像在对比度噪声比(CNR)方面进行了比较。结果表明,CS-FMC 组合产生的图像与使用 FMC 获得的图像相当。稀疏阵列的实施将 CS 重建时间提高了高达 11 倍,并将点火事件减少了约 90%。此外,图像形成速度提高了 6.6 倍,相对于 FMC,仅略微降低了图像质量。