子空间拓扑
计算机科学
聚合物
电介质
简单(哲学)
计算
遗传算法
算法
人工智能
理论计算机科学
机器学习
生物系统
材料科学
认识论
生物
哲学
复合材料
光电子学
作者
Arun Mannodi‐Kanakkithodi,Ghanshyam Pilania,Tran Doan Huan,Turab Lookman,Rampi Ramprasad
摘要
Abstract The ability to efficiently design new and advanced dielectric polymers is hampered by the lack of sufficient, reliable data on wide polymer chemical spaces and the difficulty of generating such data given time and computational/experimental constraints. Here, we address the issue of accelerating polymer dielectrics design by extracting learning models from data generated by accurate state-of-the-art first principles computations for polymers occupying an important part of the chemical subspace. The polymers are ‘fingerprinted’ as simple, easily attainable numerical representations, which are mapped to the properties of interest using a machine learning algorithm to develop an on-demand property prediction model. Further, a genetic algorithm is utilised to optimise polymer constituent blocks in an evolutionary manner, thus directly leading to the design of polymers with given target properties. While this philosophy of learning to make instant predictions and design is demonstrated here for the example of polymer dielectrics, it is equally applicable to other classes of materials as well.
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