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A novel structural-based approach to model the age hardening behaviour of aluminium alloys

机译:一种基于结构的新颖方法来模拟铝合金的时效硬化行为

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摘要

A new approach based on an artificial neural networks ( ANN) model was used to model the ageing behaviour of an Al - Mg - Si alloy. A systematic combination of hardness measurements, transmission electron microscopy (TEM), image analysis and the ANN method was used to correlate the key precipitate parameters with the age-hardening response. The ageing behaviour of AA6022 during isothermal heating was characterized by hardness measurements and the structural evolution was studied by TEM. To distinguish the precipitate morphology at each stage of ageing, an image analysis algorithm capable of capturing orientation gradient, nearest neighbour distances, number density, shapes and size of precipitates was developed. A parametric study was performed to identify the significance of each precipitate parameter, and then the most important parameters were used to train the ANN model. The model combines the most important precipitate parameters including volume fraction, shape, size and distance between precipitates. It was found that the model is able to successfully predict the age hardening behaviour of AA6022 in both deformed and undeformed conditions.
机译:一种基于人工神经网络(ANN)模型的新方法被用来模拟Al-Mg-Si合金的时效行为。使用硬度测量,透射电子显微镜(TEM),图像分析和ANN方法的系统组合,将关键的析出参数与时效硬化反应相关联。通过硬度测量来表征AA6022在等温加热过程中的老化行为,并通过TEM研究其结构演变。为了区分在老化的每个阶段的析出物形态,开发了一种能够捕获取向梯度,最近邻距离,数量密度,析出物的形状和大小的图像分析算法。进行了参数研究,以确定每个沉淀参数的重要性,然后使用最重要的参数来训练ANN模型。该模型结合了最重要的沉淀物参数,包括体积分数,形状,大小和沉淀物之间的距离。发现该模型能够成功预测AA6022在变形和未变形条件下的时效硬化行为。

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