基于柔性批处理贝叶斯优化的氧化还原液流电池自主有机合成

IF 6.2 Q1 CHEMISTRY, MULTIDISCIPLINARY
Clara Tamura, Heather Job, Henry Chang, Wei Wang, Yangang Liang and Shijing Sun
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引用次数: 0

摘要

传统的试错方法无法满足气候变化快速发展带来的迫切需求。这种紧迫性促使人们越来越关注将机器人和机器学习整合到材料研究中,以加速实验学习。然而,实现最大采样效率的理想决策框架并不总是与实验室内的高通量实验工作流程兼容。对于多步骤化学过程,硬件能力的差异会对实验中每一步的最大样品数量进行限制,从而使数字框架复杂化,从而导致同一批次中变量选择的批次大小不同。因此,设计灵活的采样算法是必要的,以适应多步合成与实际约束独特的每个高通量工作流程。在这项工作中,我们在高通量机器人平台上设计并采用了三种策略来优化液流电池中氧化还原活性分子的磺化反应。我们的策略适应多步骤实验工作流程,其中它们的配方和加热步骤是分开的,导致不同的批量大小要求。通过使用聚类和混合变量批处理贝叶斯优化进行策略性采样,我们能够迭代地确定产量最大化的最佳条件。我们的工作提出了一种灵活的方法,允许定制机器学习决策,以适应个别高通量实验平台的实际约束,然后使用可用的开源Python库执行资源高效的产量优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Autonomous organic synthesis for redox flow batteries via flexible batch Bayesian optimization

Autonomous organic synthesis for redox flow batteries via flexible batch Bayesian optimization

Traditional trial-and-error methods for materials discovery are inefficient to meet the urgent demands posed by the rapid progression of climate change. This urgency has driven the increasing interest in integrating robotics and machine learning into materials research to accelerate experimental learning. However, idealized decision-making frameworks to achieve maximum sampling efficiency are not always compatible with high-throughput experimental workflows inside a laboratory. For multi-step chemical processes, differences in hardware capacities can complicate the digital framework by introducing constraints on the maximum number of samples in each step of the experiment, hence causing varying batch sizes in variable selection within the same batch. Therefore, designing flexible sampling algorithms is necessary to accommodate the multi-step synthesis with practical constraints unique to each high-throughput workflow. In this work, we designed and employed three strategies on a high-throughput robotic platform to optimize the sulfonation reaction of redox-active molecules used in flow batteries. Our strategies adapt to the multi-step experimental workflow, where their formulation and heating steps are separate, causing varying batch size requirements. By strategically sampling using clustering and mixed-variable batch Bayesian optimization, we were able to iteratively identify optimal conditions that maximize the yields. Our work presents a flexible approach that allows tailoring the machine learning decision-making to suit the practical constraints in individual high-throughput experimental platforms, followed by performing resource-efficient yield optimization using available open-source Python libraries.

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CiteScore
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