组贡献法监督神经网络用于有机非线性光学材料的精确设计

Jinming Fan, Bowei Yuan, Chao Qian and Shaodong Zhou*, 
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引用次数: 0

摘要

为了合理设计 D-π-A 型有机小分子非线性光学材料,我们构建了一个理论指导下的机器学习框架。这种方法基于这样一种认识,即分子的光学性质可通过累积各组分的贡献来预测,这与热力学中的基团贡献法概念是一致的。为此,本研究开发了一种路易斯模式基团贡献法(LGC),并将其与多级贝叶斯神经网络和进化算法相结合,构成了一个交互式框架(LGC-msBNN-EA)。因此,只需使用少量数据集进行训练,就能准确、高效地获得分子的不同光学特性。此外,通过采用专为 LGC 设计的 EA 模型,还能很好地实现结构搜索。本文详细讨论了该框架取得令人满意的性能的原因。考虑到这一框架结合了化学原理和数据驱动工具,它很有可能被证明在完成相关领域的结构设计任务时是合理而高效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Group Contribution Method Supervised Neural Network for Precise Design of Organic Nonlinear Optical Materials

Group Contribution Method Supervised Neural Network for Precise Design of Organic Nonlinear Optical Materials

To rationalize the design of D-π-A type organic small-molecule nonlinear optical materials, a theory guided machine learning framework is constructed. Such an approach is based on the recognition that the optical property of the molecule is predictable upon accumulating the contribution of each component, which is in line with the concept of group contribution method in thermodynamics. To realize this, a Lewis-mode group contribution method (LGC) has been developed in this work, which is combined with the multistage Bayesian neural network and the evolutionary algorithm to constitute an interactive framework (LGC-msBNN-EA). Thus, different optical properties of molecules are afforded accurately and efficiently─by using only a small data set for training. Moreover, by employing the EA model designed specifically for LGC, structural search is well achievable. The origins of the satisfying performance of the framework are discussed in detail. Considering that such a framework combines chemical principles and data-driven tools, most likely, it will be proven to be rational and efficient to complete mission regarding structure design in related fields.

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来源期刊
Precision Chemistry
Precision Chemistry 精密化学技术-
CiteScore
0.80
自引率
0.00%
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0
期刊介绍: Chemical research focused on precision enables more controllable predictable and accurate outcomes which in turn drive innovation in measurement science sustainable materials information materials personalized medicines energy environmental science and countless other fields requiring chemical insights.Precision Chemistry provides a unique and highly focused publishing venue for fundamental applied and interdisciplinary research aiming to achieve precision calculation design synthesis manipulation measurement and manufacturing. It is committed to bringing together researchers from across the chemical sciences and the related scientific areas to showcase original research and critical reviews of exceptional quality significance and interest to the broad chemistry and scientific community.
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