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Combined machine learning and CALPHAD approach for discovering processing-structure relationships in soft magnetic alloys

机译:软磁合金中发现处理结构关系的组合机学习与鱿鱼方法

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摘要

FINEMET alloys have desirable soft magnetic properties due to the presence of Fe3Si nanocrystals with specific size and volume fraction. To guide future design of these alloys, we investigate relationships between select processing parameters (composition, temperature, annealing time) and structural parameters (mean radius and volume fraction) of the Fe3Si domains. We present a combined CALPHAD and machine learning approach leading to well-calibrated metamodels able to predict structural parameters quickly and accurately for any desired inputs. To generate data, we have used a known precipitation model to perform annealing simulations at several temperatures, for varying Fe and Si concentrations. Thereafter, we used the data to develop metamodels for mean radius and volume fraction via the k-Nearest Neighbour algorithm. The metamodels reproduce closely the results from the precipitation model over the entire annealing timescale. Our analysis via parallel coordinate charts shows the effect of composition, temperature, and annealing time, and helps identify combinations thereof that lead to the desired mean radius and volume fraction for nanocrystals. This work contributes to understanding the linkages between processing parameters and microstructural characteristics responsible for achieving targeted properties, and illustrates ways to reduce the time from alloy discovery to deployment.
机译:由于具有特定尺寸和体积分数的Fe3Si纳米晶体存在,Finemet合金具有所需的软磁特性。为了引导这些合金的未来设计,我们研究了Fe3SI结构域的选择处理参数(组成,温度,退火时间)和结构参数(平均半径和体积)之间的关系。我们介绍了一种综合的Calphad和机器学习方法,导致良好的校准元模型,能够快速准确地预测结构参数,以便任何所需的输入。为了产生数据,我们使用了已知的降水模型,以在几个温度下进行退火模拟,用于不同的Fe和Si浓度。此后,我们使用该数据通过K-Collect Neible算法开发用于平均半径和体积分数的元模型。元模型在整个退火时间尺度上密切地重现了降水模型的结果。我们通过平行坐标图表的分析显示了组合物,温度和退火时间的效果,并有助于识别其导致纳米晶体所需平均半径和体积级分的组合。这项工作有助于了解处理参数和负责实现目标属性的微观结构特征之间的联系,并说明了减少从合金发现部署的时间的方法。

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