基于深度学习和可解释人工智能的粉末床熔合缺陷分析

Ayush Pratap, N. Sardana, Sapdo Utomo, A. John, P. Karthikeyan, Pao-Ann Hsiung
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引用次数: 1

摘要

由于深度学习的发展,利用粉末床融合型增材制造制造的零件表面形貌数据来检测、分类和预测内部缺陷的研究在过去十年中已经成为一个热门话题。然而,除了准确性和度量之外,没有其他证据可以评估该模型。本文从各种文献和其他来源编译了一个新的数据集,使用可解释人工智能(XAI)来评估黑箱模型。该数据集包含三个主要的粉末床熔合缺陷:气体孔隙、熔合不足和成球。该异常最初是通过卷积神经网络(CNN)和迁移学习发现的。根据测试数据,进行模型比较,以确定最佳精度和F1分数。VGG16在准确性方面优于所有其他模型,F1得分为98.6%。此外,还将该模型与现有的粉末床熔合缺陷分类模型进行了比较。最后,使用VGG16对测试数据集进行解释和解释。LIME解释表明,模型预测的特征与断层同时存在。因此,我们有信心,采用XAI提出的模型将大大提高粉末床熔合领域输出结果的公平性和可信度。这也有助于工业4.0领域增材制造的自动化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Defect Associated with Powder Bed Fusion with Deep Learning and Explainable AI
Research into the detection, classification, and prediction of internal defects using surface morphology data of parts created via powder bed fusion-type additive manufacturing has become a hot topic in the previous decade thanks to the development of deep learning. However, there is no other evidence to evaluate the model other than accuracy and metrics. In this paper, a novel data set is compiled from various literature and other sources to evaluate the black box model using explainable artificial intelligence (XAI). The data set contains three major powder bed fusion defects: gas porosity, lack of fusion, and balling. The anomaly was initially found using convolutional neural networks (CNN) and transfer learning. Based on test data, a model comparison was performed to determine the best accuracy and an F1 score. VGG16 has outperformed all other models in terms of accuracy, with an F1 score of 98.6 percent. Further, the model has been compared with the existing state-of-the-art model for classification in the domain of powder bed fusion defects. Finally, VGG16 was employed to interpret and explain the test data set. The LIME explanations revealed that the feature predicted by the model was present in conjunction with the fault. As a result, we are confident that the proposed model with XAI would considerably improve the fairness and trustworthiness of the output result in the powder bed fusion field. This can also aid in the automation of additive manufacturing in the realm of Industry 4.0.
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