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A Bayesian experimental autonomous researcher for mechanical design

机译:机械设计贝叶斯实验自主研究人员

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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.
机译:虽然添加剂制造(AM)促进了复杂结构的产生,但它还强调了鉴定给定应用的最佳AM结构的固有的巨大挑战。数值方法是优化的重要工具,但实验仍然是研究非线性,但临界机械性能的金标准,如韧性。为了满足AM设计空间的广大目标和对实验的需求,我们开发了一个贝叶斯实验自主研究员(熊),将贝叶斯优化和高通量自动化实验结合起来。除了快速执行实验之外,熊通过基于所有可用的结果选择实验来利用迭代实验。使用熊,我们探索参数族结构的韧性,并观察相对于基于网格的搜索识别高性能结构所需的实验数量的几乎60倍。这些结果显示了数据稀疏的实验领域中的机器学习的价值。

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