微型深度学习架构实现传感器附近的声学数据处理和缺陷定位

Comput. Pub Date : 2023-06-23 DOI:10.3390/computers12070129
Giacomo Donati, F. Zonzini, L. Marchi
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引用次数: 0

摘要

在缺陷形成初期及时诊断缺陷对延长技术设备的生命周期至关重要。这是机械相关应力的情况,无论是由于长时间的老化降解过程(例如,腐蚀)还是由于操作中的力(例如,冲击事件),这可能会引起有害的损害,例如裂纹,分离或分层,最常见的是随后释放声能。采用基于声发射(AE)的检测技术,通过计算到达时间(ToA),即声事件发生时释放的感应机械波到达采集单元的时间,可以成功地实现这些源的定位。然而,较差的信噪比(SNRs)可能会阻碍ToA的准确估计。在这些情况下,标准的统计方法通常会失败。在这项工作中,提出了两种替代的深度学习方法用于处理声发射信号的ToA检索,即扩展卷积神经网络(DilCNN)和用于ToA的胶囊神经网络(CapsToA)。这些方法还具有在资源受限的微处理器上可移植的额外好处。它们的性能已经在合成和实验数据上进行了广泛的研究,重点是金属板的ToA识别问题。结果表明,即使在信噪比严重受损(即低至2 dB)的情况下,这两种方法的定位误差也比传统策略的定位误差高出70%。此外,DilCNN和CapsNet已经在一个小型机器学习环境中实现,然后部署在微控制器单元上,相对于离线实现,表现出可以忽略不计的性能损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tiny Deep Learning Architectures Enabling Sensor-Near Acoustic Data Processing and Defect Localization
The timely diagnosis of defects at their incipient stage of formation is crucial to extending the life-cycle of technical appliances. This is the case of mechanical-related stress, either due to long aging degradation processes (e.g., corrosion) or in-operation forces (e.g., impact events), which might provoke detrimental damage, such as cracks, disbonding or delaminations, most commonly followed by the release of acoustic energy. The localization of these sources can be successfully fulfilled via adoption of acoustic emission (AE)-based inspection techniques through the computation of the time of arrival (ToA), namely the time at which the induced mechanical wave released at the occurrence of the acoustic event arrives to the acquisition unit. However, the accurate estimation of the ToA may be hampered by poor signal-to-noise ratios (SNRs). In these conditions, standard statistical methods typically fail. In this work, two alternative deep learning methods are proposed for ToA retrieval in processing AE signals, namely a dilated convolutional neural network (DilCNN) and a capsule neural network for ToA (CapsToA). These methods have the additional benefit of being portable on resource-constrained microprocessors. Their performance has been extensively studied on both synthetic and experimental data, focusing on the problem of ToA identification for the case of a metallic plate. Results show that the two methods can achieve localization errors which are up to 70% more precise than those yielded by conventional strategies, even when the SNR is severely compromised (i.e., down to 2 dB). Moreover, DilCNN and CapsNet have been implemented in a tiny machine learning environment and then deployed on microcontroller units, showing a negligible loss of performance with respect to offline realizations.
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