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Optimal Matched Filter Design for Ultrasonic NDE of Coarse Grain Materials

机译:粗粒材料超声NDE的最佳匹配滤波器设计

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摘要

Coarse grain materials are widely used in a variety of key industrial sectors like energy, oil and gas, and aerospace due to their attractive properties. However, when these materials are inspected using ultrasound, the flaw echoes are usually contaminated by high-level, correlated grain noise originating from the material microstructures, which is time-invariant and demonstrates similar spectral characteristics as flaw signals. As a result, the reliable inspection of such materials is highly challenging. In this paper, we present a method for reliable ultrasonic non-destructive evaluation (NDE) of coarse grain materials using matched filters, where the filter is designed to approximate and match the unknown defect echoes, and a particle swarm optimization (PSO) paradigm is employed to search for the optimal parameters in the filter response with an objective to maximise the output signal-to-noise ratio (SNR). Experiments with a 128-element 5MHz transducer array on mild steel and INCONEL Alloy 617 samples are conducted, and the results confirm that the SNR of the images is improved by about 10-20 dB if the optimized matched filter is applied to all the A-scan waveforms prior to image formation. Furthermore, the matched filter can be implemented in real-time with low extra computational cost.
机译:粗粮材料具有吸引人的特性,因此广泛用于能源,石油和天然气以及航空航天等各种关键工业领域。但是,当使用超声波检查这些材料时,缺陷回波通常会受到来自材料微结构的高水平,相关的颗粒噪声的污染,该噪声是随时间变化的,并表现出与缺陷信号相似的光谱特征。结果,对这种材料的可靠检查是非常具有挑战性的。在本文中,我们提出了一种使用匹配滤波器对粗粒材料进行可靠的超声非破坏性评估(NDE)的方法,该滤波器设计用于近似和匹配未知缺陷回波,并且粒子群优化(PSO)范式为用于在滤波器响应中搜索最佳参数,目的是使输出信噪比(SNR)最大化。在低碳钢和INCONEL 617合金样品上进行了128元素5MHz换能器阵列的实验,结果证实,如果将优化的匹配滤波器应用于所有A-,则图像的SNR可以提高约10-20 dB。在成像之前扫描波形。此外,可以以低的额外计算成本实时地实现匹配滤波器。

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