贝叶斯优化
计算机科学
贝叶斯概率
吞吐量
参数统计
实验设计
机器学习
非线性系统
贝叶斯推理
人工智能
数学
无线
量子力学
电信
统计
物理
作者
Aldair E. Gongora,Bowen Xu,Wyatt Perry,Chika Okoye,Patrick Riley,Kristofer G. Reyes,Elise F. Morgan,Keith A. Brown
出处
期刊:Science Advances
[American Association for the Advancement of Science (AAAS)]
日期:2020-04-10
卷期号:6 (15)
被引量:197
标识
DOI:10.1126/sciadv.aaz1708
摘要
While additive manufacturing (AM) has facilitated the production of complex structures, it has also highlighted the immense challenge inherent in identifying the optimum AM structure for a given application. Numerical methods are important tools for optimization, but experiment remains the gold standard for studying nonlinear, but critical, mechanical properties such as toughness. To address the vastness of AM design space and the need for experiment, we develop a Bayesian experimental autonomous researcher (BEAR) that combines Bayesian optimization and high-throughput automated experimentation. In addition to rapidly performing experiments, the BEAR leverages iterative experimentation by selecting experiments based on all available results. Using the BEAR, we explore the toughness of a parametric family of structures and observe an almost 60-fold reduction in the number of experiments needed to identify high-performing structures relative to a grid-based search. These results show the value of machine learning in experimental fields where data are sparse.
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