论文标题
P3HT-CNT复合薄膜的机器学习和高通量鲁棒设计,用于高电导率
Machine learning and high-throughput robust design of P3HT-CNT composite thin films for high electrical conductivity
论文作者
论文摘要
将高通量实验与机器学习相结合,可以快速优化参数空间以实现目标属性。在这项研究中,我们证明了机器学习与多标签数据集相结合,还可以用于科学理解和假设测试。我们引入了一个具有高通量滴剂的自动流动系统,用于薄膜制备,然后快速表征光学和电气性能,并能够在一天内完成一个完全标记的〜160个样品的一个周期。我们将区域规范的聚-3-己基噻吩与各种碳纳米管相结合,以达到高达1200 s/cm的电导率。有趣的是,当10%的双壁碳纳米管中添加10%的双壁碳纳米管时,将出现非直觉的局部最佳最佳,其中电导率被认为高达700 s/cm,我们随后以高富达光学表征来解释。采用数据集重新采样策略和基于图的回归使我们能够说明相关多出输出的实验成本和不确定性估计,并支持将电荷定位到电导率的假设链接到电导率的证明。因此,我们提出了一种强大的机器学习驱动的高通量实验方案,该方案可用于优化和了解复合材料或混合有机无机材料的特性。
Combining high-throughput experiments with machine learning allows quick optimization of parameter spaces towards achieving target properties. In this study, we demonstrate that machine learning, combined with multi-labeled datasets, can additionally be used for scientific understanding and hypothesis testing. We introduce an automated flow system with high-throughput drop-casting for thin film preparation, followed by fast characterization of optical and electrical properties, with the capability to complete one cycle of learning of fully labeled ~160 samples in a single day. We combine regio-regular poly-3-hexylthiophene with various carbon nanotubes to achieve electrical conductivities as high as 1200 S/cm. Interestingly, a non-intuitive local optimum emerges when 10% of double-walled carbon nanotubes are added with long single wall carbon nanotubes, where the conductivity is seen to be as high as 700 S/cm, which we subsequently explain with high fidelity optical characterization. Employing dataset resampling strategies and graph-based regressions allows us to account for experimental cost and uncertainty estimation of correlated multi-outputs, and supports the proving of the hypothesis linking charge delocalization to electrical conductivity. We therefore present a robust machine-learning driven high-throughput experimental scheme that can be applied to optimize and understand properties of composites, or hybrid organic-inorganic materials.