Gaussian Process-Based Model to Optimize Additively Manufactured Powder Microstructures From Phase Field Modeling

A. Batabyal, Sugrim Sagar, Jian Zhang, T. Dube, Xuehui Yang, Jing Zhang
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引用次数: 2

Abstract

A persistent problem in the selective laser sintering process is to maintain the quality of additively manufactured parts, which can be attributed to the various sources of uncertainty. In this work, a two-particle phase-field microstructure model has been analyzed using a Gaussian process-based model. The sources of uncertainty as the two input parameters were surface diffusivity and interparticle distance. The response quantity of interest (QOI) was selected as the size of the neck region that develops between the two particles. Two different cases with equal and unequal-sized particles were studied. It was observed that the neck size increased with increasing surface diffusivity and decreased with increasing interparticle distance irrespective of particle size. Sensitivity analysis found that the interparticle distance has more influence on variation in neck size than that of surface diffusivity. The machine learning algorithm Gaussian process regression was used to create the surrogate model of the QOI. Bayesian optimization method was used to find optimal values of the input parameters. For equal-sized particles, optimization using Probability of Improvement provided optimal values of surface diffusivity and interparticle distance as 23.8268 and 40.0001, respectively. The Expected Improvement as an acquisition function gave optimal values of 23.9874 and 40.7428, respectively. For unequal-sized particles, optimal design values from Probability of Improvement were 23.9700 and 33.3005, respectively, while those from Expected Improvement were 23.9893 and 33.9627, respectively. The optimization results from the two different acquisition functions seemed to be in good agreement.
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基于高斯过程的增材制造粉末微观结构相场优化模型
在选择性激光烧结工艺中,一个长期存在的问题是如何保持增材制造零件的质量,这可以归因于各种不确定性来源。本文采用基于高斯过程的模型分析了双粒子相场微观结构模型。作为两个输入参数的不确定性来源是表面扩散率和粒子间距离。感兴趣的响应量(QOI)被选择为两个粒子之间形成的颈部区域的大小。研究了颗粒大小不等和颗粒大小不等的两种情况。观察到,与颗粒大小无关,颈部尺寸随表面扩散系数的增加而增加,随颗粒间距的增加而减小。灵敏度分析发现,粒子间距离比表面扩散系数对颈部尺寸变化的影响更大。利用机器学习算法高斯过程回归建立了QOI的代理模型。采用贝叶斯优化方法寻找输入参数的最优值。对于等粒径粒子,采用改进概率法优化得到的表面扩散系数和粒子间距离的最优值分别为23.8268和40.0001。期望改进作为获取函数的最优值分别为23.9874和40.7428。对于非等粒径颗粒,改进概率的最优设计值分别为23.9700和33.3005,期望改进的最优设计值分别为23.9893和33.9627。两种不同采集函数的优化结果似乎是一致的。
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CiteScore
5.20
自引率
13.60%
发文量
34
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