Deep Neural Network-Based Approach for Modeling, Predicting, and Validating Weld Quality and Mechanical Properties of Friction Stir Welded Dissimilar Materials

IF 2.1 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
JOM Pub Date : 2023-09-25 DOI:10.1007/s11837-023-06121-w
Shrushti Maheshwari, Amlan Kar, Zafar Alam, Lalan Kumar
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Abstract

The present investigation highlights the development of a suitable and novel deep neural network-based learning model for accurately predicting the weld quality and mechanical properties of difficult-to-join dissimilar materials. Optimized experimental welding parameters in the available literature were taken as input in the deep neural network (DNN). A feed-forward and back-propagated DNN was developed to apprehend the high non-complexity present in friction stir welding of dissimilar materials. Unlike most neural networks, activation functions were altered between layers, effectively capturing non-linearity. The developed model was used to design an experimental condition for dissimilar friction stir welding of aluminum and titanium. Microstructural characterization of the weld was performed to comprehend the influence of parameters on the quality of the joint produced. A close correlation between the machine-learning model and the experimental results was established. The coefficient of determination \(R^2\) between the predicted strength and the actual strength was 0.95 on the training dataset and 0.9 on the testing dataset. Similarly, \(R^2\) between the predicted strength and the actual strength for the experimental dataset was 0.91, thus making the model suitable for predicting experimental conditions and corresponding mechanical properties with the highest accuracy for any unknown dissimilar friction stir welds.

Abstract Image

基于深度神经网络的搅拌摩擦焊接异种材料焊接质量和力学性能建模、预测和验证方法
目前的研究重点是开发一种合适的、新颖的基于深度神经网络的学习模型,用于准确预测难以连接的异种材料的焊接质量和力学性能。将现有文献中优化的实验焊接参数作为深度神经网络(DNN)的输入。开发了一种前馈和反向传播的DNN,以理解不同材料搅拌摩擦焊中存在的高度非复杂性。与大多数神经网络不同,激活函数在层之间发生变化,有效地捕捉非线性。利用所建立的模型设计了铝钛异种搅拌摩擦焊的试验条件。对焊缝进行了微观结构表征,以了解参数对接头质量的影响。机器学习模型与实验结果之间建立了密切的相关性。在训练数据集上,预测强度和实际强度之间的决定系数(R^2)为0.95,在测试数据集上为0.9。类似地,实验数据集的预测强度和实际强度之间的\(R^2)为0.91,因此该模型适用于预测实验条件和任何未知的不同搅拌摩擦焊缝的相应机械性能,具有最高精度。
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来源期刊
JOM
JOM 工程技术-材料科学:综合
CiteScore
4.50
自引率
3.80%
发文量
540
审稿时长
2.8 months
期刊介绍: JOM is a technical journal devoted to exploring the many aspects of materials science and engineering. JOM reports scholarly work that explores the state-of-the-art processing, fabrication, design, and application of metals, ceramics, plastics, composites, and other materials. In pursuing this goal, JOM strives to balance the interests of the laboratory and the marketplace by reporting academic, industrial, and government-sponsored work from around the world.
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