4.6 Article

A Neural Network Approach for Property Determination of Molecular Solar Cell Candidates

Journal

JOURNAL OF PHYSICAL CHEMISTRY A
Volume 126, Issue 10, Pages 1681-1688

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.jpca.2c00351

Keywords

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Funding

  1. Danish Council for Independent Research [DFF-0136-00081 B]
  2. European Union [951801]

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The dihydroazulene/vinylheptafulvene photocouple has the potential to be used as a candidate for molecular solar heat batteries. By using machine learning and convolutional neural networks, it is possible to rapidly screen a large number of photocouples and eliminate unsuitable candidates, saving computational resources.
The dihydroazulene/vinylheptafulvene (DHA/VHF) photocouple is a promising candidate for molecular solar heat batteries, storing and releasing energy in a closed cycle. Much work has been done on improving the energy storage capacity and the half-life of the high-energy isomer via substituent functionalization, but similarly important is keeping these improved properties in common polar solvents, along with being soluble in these, which is tied to the dipole properties. However, the number of possible derivatives makes an overview of this combinatorial space impossible both for experimental work and traditional computational chemistry. Due to the time-consuming nature of running many thousands of computations, we look to machine learning, which bears the advantage that once a model has been trained, it can be used to rapidly estimate approximate values for the given system. Applying a convolutional neural network, we show that it is possible to reach good agreement with traditional computations on a scale that allows us to rapidly screen tens of thousands of the DHA/VHF photocouple, eliminating bad candidates and allowing computational resources to be directed toward meaningful compounds.

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