With the demand for renewable energy and efficient devices rapidly increasing, a need arises to find and optimize novel (nano)materials. This can be an extremely tedious process, often relying significantly on trial and error. Machine learning has emerged recently as a powerful alternative; however, most approaches require a substantial amount of data points, i.e., syntheses. Here, we merge three machine-learning models with Bayesian Optimization and are able to dramatically improve the quality of CsPbBr3 nanoplatelets (NPLs) using only approximately 200 total syntheses. The algorithm can predict the resulting PL emission maxima of the NPL dispersions based on the precursor ratios, which lead to previously unobtainable 7 and 8 ML NPLs. Aided by heuristic knowledge, the algorithm should be easily applicable to other nanocrystal syntheses and significantly help to identify interesting compositions and rapidly improve their quality.
翻译:随着可再生能源和高效装置需求迅速增长,需要寻找和优化新颖(纳米)材料,这可能会是一个极其乏味的过程,往往大量依赖试验和错误。机器学习最近作为一种强有力的替代方法出现;然而,大多数方法需要大量的数据点,即合成。在这里,我们把三种机器学习模型与巴伊西亚最佳化结合起来,能够使用大约200个合成材料大幅提高CsPbBr3纳米聚合物的质量。算法可以预测基于先质比率的NPL扩散的PL最大排放量,这导致先前无法达到的7和8 ML NPL NPL。在超自然知识的帮助下,该算法应该很容易地适用于其他纳米合成材料,并极大地帮助查明有趣的成分并迅速改进质量。