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Reference Number EP/Z002982/1
Title ANDANTE: Accelerated nonadiabatic dynamics in photochromic molecular crystals
Status Funded
Energy Categories Other Cross-Cutting Technologies or Research 5%;
Not Energy Related 95%;
Research Types Basic and strategic applied research 100%
Science and Technology Fields PHYSICAL SCIENCES AND MATHEMATICS (Chemistry) 50%;
PHYSICAL SCIENCES AND MATHEMATICS (Computer Science and Informatics) 50%;
UKERC Cross Cutting Characterisation Not Cross-cutting 100%
Principal Investigator Dr R Crespo-Otero

Chemistry
University College London
Award Type Standard
Funding Source EPSRC
Start Date 01 May 2025
End Date 30 April 2027
Duration 24 months
Total Grant Value £192,297
Industrial Sectors
Region London
Programme UKRI MSCA
 
Investigators Principal Investigator Dr R Crespo-Otero , Chemistry, University College London (100.000%)
Web Site
Objectives
Abstract Light is a versatile stimulus, offering multiple adjustable parameters that allow for precise manipulation without physical contact or as an energy source. Recently, there has been a growing interest in light-controlled photochromic materials (PCMs). These materials have garnered attention due to their significance in fundamental research and diverse applications, including optical switches, optical data storage devices, energy-efficient coatings, energy storage, and eyewear. Photochromism, defined as the reversible transformation of a chemical species between two different isomers with distinct absorption spectra, plays a pivotal role in PCMs. This transformation is initiated by exposure to light and can occur in both forward and reverse directions. In this context, excited state modelling is essential to understand mechanisms in PCMs, aiding the design and optimization of new materials. However, computational limitations, particularly the high computational costs associated with non-adiabatic dynamics (NAMD) in crystalline environments, present significant challenges in studying these reactions. An alternative approach to address these computational challenges is to employ data-driven models alongside traditional quantum chemistry (QC) calculations. Machine learning (ML) models, trained using quantum chemical data, have shown great promise in predicting ground state energies and forces with remarkable precision. This data-driven approach has the potential to substantially accelerate simulations. This research project aims to integrate Graph Neural Networks (GNNs) with existing QC codes to enhance and expedite NAMD simulations within solid environments, extending the simulation timescales. Our research focuses around investigating the cyclization reaction of photochromic diarylethene derivatives. This will serve as a crucial case study to evaluate the efficacy of the suggested approaches in understanding the behaviour of known materials and aiding in the discovery
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Added to Database 03/07/24