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通过人工神经网络预测力学性能以表征铝合金的塑性行为

Prediction of Mechanical Properties by Artificial Neural Networks to Characterize the Plastic Behavior of Aluminum Alloys.

作者信息

Merayo David, Rodríguez-Prieto Alvaro, Camacho Ana María

机构信息

Department of Manufacturing Engineering, Universidad Nacional de Educación a Distancia (UNED), Juan del Rosal 12, 28040 Madrid, Spain.

出版信息

Materials (Basel). 2020 Nov 19;13(22):5227. doi: 10.3390/ma13225227.

Abstract

In metal forming, the plastic behavior of metallic alloys is directly related to their formability, and it has been traditionally characterized by simplified models of the flow curves, especially in the analysis by finite element simulation and analytical methods. Tools based on artificial neural networks have shown high potential for predicting the behavior and properties of industrial components. Aluminum alloys are among the most broadly used materials in challenging industries such as aerospace, automotive, or food packaging. In this study, a computer-aided tool is developed to predict two of the most useful mechanical properties of metallic materials to characterize the plastic behavior, yield strength and ultimate tensile strength. These prognostics are based on the alloy chemical composition, tempers, and Brinell hardness. In this study, a material database is employed to train an artificial neural network that is able to make predictions with a confidence greater than 95%. It is also shown that this methodology achieves a performance similar to that of empirical equations developed expressly for a specific material, but it provides greater generality since it can approximate the properties of any aluminum alloy. The methodology is based on the usage of artificial neural networks supported by a big data collection about the properties of thousands of commercial materials. Thus, the input data go above 2000 entries. When the relevant information has been collected and organized, an artificial neural network is defined, and after the training, the artificial intelligence is able to make predictions about the material properties with an average confidence greater than 95%.

摘要

在金属成型过程中,金属合金的塑性行为与其可成型性直接相关,传统上通过流动曲线的简化模型来表征,特别是在有限元模拟和分析方法的分析中。基于人工神经网络的工具已显示出预测工业部件行为和性能的巨大潜力。铝合金是航空航天、汽车或食品包装等具有挑战性行业中使用最广泛的材料之一。在本研究中,开发了一种计算机辅助工具来预测金属材料最有用的两种力学性能,以表征塑性行为,即屈服强度和极限抗拉强度。这些预测基于合金化学成分、回火状态和布氏硬度。在本研究中,使用材料数据库训练一个人工神经网络,该网络能够以大于95%的置信度进行预测。研究还表明,该方法实现的性能与专门为特定材料开发的经验方程相似,但它具有更高的通用性,因为它可以近似任何铝合金的性能。该方法基于人工神经网络的使用,并辅以关于数千种商业材料性能的大数据收集。因此,输入数据超过2000条记录。当相关信息收集并整理好后,定义一个人工神经网络,经过训练后,人工智能能够以大于95%的平均置信度对材料性能进行预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/359e/7699297/f94a5143d5b7/materials-13-05227-g0A1.jpg

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