We present a translation of the chemical intuition in materials discovery, in terms of chemical similarity of efficient materials, into a rigorous framework exploiting machine learning. We computed equilibrium geometries and electronic properties (DFT) for a database of 249 Organic donor–acceptor pairs. We obtain similarity metrics between pairs of donors in terms of electronic and structural parameters, and we use such metrics to predict photovoltaic efficiency through linear and non-linear machine learning models. We observe that using only electronic or structural parameters leads to similar results, while considering both parameters at the same time improves the predictive capability of the models up to correlations of r ≈ 0.7. Such cor...
Materials for organic electronics are presently used in prominent applications, such as displays in ...
Materials optimization for organic solar cells (OSCs) is a highly active field, with many approaches...
Funder: Cambridge TrustFunder: National Research Foundation SingaporeFunder: Alexander von Humboldt-...
We present a translation of the chemical intuition in materials discovery, in terms of chemical simi...
In the process of finding high-performance materials for organic photovoltaics (OPVs), it is meaning...
To design efficient materials for organic photovoltaics (OPVs), it is essential to identify the larg...
In this work, we analyzed a data set formed by 566 donor/acceptor pairs, which are part of organic s...
Designing efficient organic photovoltaic (OPV) materials purposefully is still challenging and time-...
Organic semiconductors are promising materials for cheap, scalable and sustainable electronics, ligh...
The purpose of this work is to lower the computational cost of predicting charge mobilities in organ...
Organic solar cells are famous for their cheap solution processing. Their industrialization needs fa...
The discovery of novel high-performing materials such as non-fullerene acceptors and low band gap do...
Due to the large versatility in organic semiconductors, selecting a suitable (organic semiconductor)...
A machine learning approach for extracting information from organic photovoltaic (OPV) solar cell da...
Substantial enhancements in the efficiencies of bulk-heterojunction (BHJ) organic solar cells (OSCs)...
Materials for organic electronics are presently used in prominent applications, such as displays in ...
Materials optimization for organic solar cells (OSCs) is a highly active field, with many approaches...
Funder: Cambridge TrustFunder: National Research Foundation SingaporeFunder: Alexander von Humboldt-...
We present a translation of the chemical intuition in materials discovery, in terms of chemical simi...
In the process of finding high-performance materials for organic photovoltaics (OPVs), it is meaning...
To design efficient materials for organic photovoltaics (OPVs), it is essential to identify the larg...
In this work, we analyzed a data set formed by 566 donor/acceptor pairs, which are part of organic s...
Designing efficient organic photovoltaic (OPV) materials purposefully is still challenging and time-...
Organic semiconductors are promising materials for cheap, scalable and sustainable electronics, ligh...
The purpose of this work is to lower the computational cost of predicting charge mobilities in organ...
Organic solar cells are famous for their cheap solution processing. Their industrialization needs fa...
The discovery of novel high-performing materials such as non-fullerene acceptors and low band gap do...
Due to the large versatility in organic semiconductors, selecting a suitable (organic semiconductor)...
A machine learning approach for extracting information from organic photovoltaic (OPV) solar cell da...
Substantial enhancements in the efficiencies of bulk-heterojunction (BHJ) organic solar cells (OSCs)...
Materials for organic electronics are presently used in prominent applications, such as displays in ...
Materials optimization for organic solar cells (OSCs) is a highly active field, with many approaches...
Funder: Cambridge TrustFunder: National Research Foundation SingaporeFunder: Alexander von Humboldt-...