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Using simulation to accelerate autonomous experimentation: A case study using mechanics

机译:利用仿真加速自主实验:用力学进行案例研究

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摘要

Autonomous experimentation (AE) accelerates research by combining automation and machine learning to perform experiments intelligently and rapidly in a sequential fashion. While AE systems are most needed to study properties that cannot be predicted analytically or computationally, even imperfect predictions can in principle be useful. Here, we investigate whether imperfect data from simulation can accelerate AE using a case study on the mechanics of additively manufactured structures. Initially, we study resilience, a property that is well-predicted by finite element analysis (FEA), and find that FEA can be used to build a Bayesian prior and experimental data can be integrated using discrepancy modeling to reduce the number of needed experiments ten-fold. Next, we study toughness, a property not well-predicted by FEA and find that FEA can still improve learning by transforming experimental data and guiding experiment selection. These results highlight multiple ways that simulation can improve AE through transfer learning.
机译:自动实验(AE)通过结合自动化和机器学习来加速研究,以顺序方式智能地迅速地执行实验。虽然最需要AE系统来研究无法分析或计算无法预测的属性,但甚至原则上也可以是有用的。在这里,我们研究了模拟中的不完全数据是否可以使用壳体研究的案例研究加速AE。最初,我们研究恢复力,通过有限元分析(FEA)预测的属性,并发现FEA可用于构建贝叶斯先前,并且可以使用差异建模集成实验数据以减少所需实验的数量-折叠。接下来,我们研究韧性,不受资助预测的财产,并发现FEA仍然可以通过转换实验数据和指导实验选择来改善学习。这些结果突出了通过传输学习来改善AE的多种方式。

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