掺杂剂
材料科学
材料信息学
电导率
聚合物
导电聚合物
数码产品
纳米技术
有机电子学
兴奋剂
工作(物理)
计算机科学
光电子学
晶体管
电气工程
健康信息学
机械工程
复合材料
工程信息学
工程类
公共卫生
物理化学
护理部
电压
化学
医学
作者
Harikrishna Sahu,Hongmo Li,Lihua Chen,Arunkumar Chitteth Rajan,Chiho Kim,Natalie Stingelin,Rampi Ramprasad
标识
DOI:10.1021/acsami.1c04017
摘要
Doping conjugated polymers, which are potential candidates for the next generation of organic electronics, is an effective strategy for manipulating their electrical conductivity. However, selecting a suitable polymer–dopant combination is exceptionally challenging because of the vastness of the chemical, configurational, and morphological spaces one needs to search. In this work, high-performance surrogate models, trained on available experimentally measured data, are developed to predict the p-type electrical conductivity and are used to screen a large candidate hypothetical data set of more than 800 000 polymer–dopant combinations. Promising candidates are identified for synthesis and device fabrication. Additionally, new design guidelines are extracted that verify and extend knowledge on important molecular fragments that correlate to high conductivity. Conductivity prediction models are also deployed at www.polymergenome.org for broader open-access community use.
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