使用人工智能驱动方法预测FSW材料的行为

Abdelhakim Dorbane, F. Harrou, Ying Sun
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引用次数: 0

摘要

提出了一种灵活的数据驱动方法来预测Al6061-T6铝合金在搅拌摩擦焊接中的力学行为。具体来说,本研究研究了门控循环单元(GRU),一种深度学习模型。这是GRU模型首次用于预测材料的应力-应变曲线。GRU的主要特点在于它能够模拟时间序列数据,并且只依赖于调查材料中的历史和实际数据。通过对基材进行单轴拉伸试验,并在10−3s−1的变形速度下进行搅拌摩擦焊接,得到了GRU模型的性能。对拉伸试验结果的预测表明,该方法具有较好的预测效果和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting FSW Material’s Behavior using an Artificial Intelligence-Driven Approach
A flexible data-driven methodology was developed to forecast the mechanical behavior of an aluminum alloy, namely Al6061-T6, in the case of friction stir welding. Specifically, Gated recurrent unit (GRU), a deep learning model, was investigated in this study. This is the first time the GRU model has been used to forecast the stress-strain curve of a material. The major features of the GRU consist in its ability to model time-series data and rely only on historical and actual data from the investigated material. The performance of the GRU model has been demonstrated based on actual data collected by conducting uniaxial tensile testing on the base material, and friction stirred welded, both tested at a deformation speed of 10−3s−1. Forecasting tensile tests results showed promising and accurate results of the GRU-driven forecasting.
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