利用羔羊波和可解释人工智能进行螺栓连接松动定位和扭矩预测

Muping Hu, Nan Yue, R. Groves
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引用次数: 0

摘要

随着人工智能(AI)技术在结构健康监测(SHM)领域的应用日益广泛,人们对解释基于深度学习的结构健康监测方法中黑盒模型的决策越来越感兴趣。在这项工作中,我们进一步利用可解释性来提高人工智能模型的性能。在这项工作中,可解释人工智能(XAI)算法的结果被用来减少一维卷积神经网络(1D-CNN)的输入大小,从而简化 CNN 结构。为了选择最精确的 XAI 算法,我们提出了一种新的评估方法--特征灵敏度 (FS)。利用 XAI 和 FS,我们提出了一个缩小维度的一维 CNN 回归模型(FS-X1D-CNN),用于定位和预测不同温度条件下 16 个螺栓连接的铝板中松动螺栓的扭矩。结果与带有原始输入向量的一维 CNN(RI-1D-CNN)和深度自动编码器一维 CNN(DAE-1D-CNN)进行了比较。结果表明,FS-X1D-CNN 实现了最高的预测精度,定位精度为 5.95 mm,扭矩预测精度为 0.54 Nm,收敛速度比 RI-1D-CNN 快 10 倍,比 DAE-1D-CNN 快 15 倍,而只使用了一条λ波信号路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Loose bolt localization and torque prediction in a bolted joint using lamb waves and explainable artificial intelligence
With the increasing application of artificial intelligence (AI) techniques in the field of structural health monitoring (SHM), there is a growing interest in explaining the decision-making of the black-box models in deep learning-based SHM methods. In this work, we take explainability a step further by using it to improve the performance of AI models. In this work, the results of explainable artificial intelligence (XAI) algorithms are used to reduce the input size of a one-dimensional convolutional neural network (1D-CNN), hence simplifying the CNN structure. To select the most accurate XAI algorithm for this purpose, we propose a new evaluation method, feature sensitivity (FS). Utilizing XAI and FS, a reduced dimension 1D-CNN regression model (FS-X1D-CNN) is proposed to locate and predict the torque of loose bolts in a 16-bolt connected aluminum plate under varying temperature conditions. The results were compared with 1D CNN with raw input vector (RI-1D-CNN) and deep autoencoders-1D-CNN (DAE-1D-CNN). It is shown that FS-X1D-CNN achieves the highest prediction accuracy with 5.95 mm in localization and 0.54 Nm in torque prediction, and converges 10 times faster than RI-1D-CNN and 15 times faster than DAE-1D-CNN, while only using a single lamb wave signal path.
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