Optimization of experimental materials synthesis and characterization through active learning methods has been growing over the last decade, with examples ranging from measurements of diffraction on combinatorial alloys at synchrotrons, to searches through chemical space with automated synthesis robots for perovskites. In virtually all cases, the target property of interest for optimization is defined apriori with limited human feedback during operation. In contrast, here we present the development of a new type of human in the loop experimental workflow, via a Bayesian optimized active recommender system (BOARS), to shape targets on the fly, employing human feedback. We showcase examples of this framework applied to pre-acquired piezoresponse force spectroscopy of a ferroelectric thin film, and then implement this in real time on an atomic force microscope, where the optimization proceeds to find symmetric piezoresponse amplitude hysteresis loops. It is found that such features appear more affected by subsurface defects than the local domain structure. This work shows the utility of human-augmented machine learning approaches for curiosity-driven exploration of systems across experimental domains. The analysis reported here is summarized in Colab Notebook for the purpose of tutorial and application to other data: https://github.com/arpanbiswas52/varTBO
翻译:多年来,通过主动学习方法优化实验材料的合成和表征已经在过去十年中得到了增长,其中的示例范围从同步辐射上合金的衍射测量,到通过自动合成机器人在化学空间中搜索钙钛矿物质。几乎在所有情况下,目标优化的属性都是事先定义的,在操作过程中人类反馈有限。相反,在这里,我们提出了一种新型的人机实验工作流,通过贝叶斯优化的活动推荐系统(BOARS),在操作过程中利用人类反馈,动态调整实验目标。我们展示了这种框架应用于预先获得的铁电薄膜压电响应力谱,并将其实时实现在原子力显微镜上,在此过程中优化以找到对称的压电响应幅值滞回曲线。发现这种特征更受亚表面缺陷的影响而非局部领域结构。这项工作展示了人工智能辅助人类探索各个实验领域的好处。此处报告的分析结果总结在 Colab Notebook 中,目的是作为教程并应用于其他数据:https://github.com/arpanbiswas52/varTBO