Treffer: Accelerating Chemical Discovery with Machine Learning: Simulated Evolution of Spin Crossover Complexes with an Artificial Neural Network.

Title:
Accelerating Chemical Discovery with Machine Learning: Simulated Evolution of Spin Crossover Complexes with an Artificial Neural Network.
Authors:
Janet JP; Department of Chemical Engineering, Massachusetts Institute of Technology , Cambridge, Massachusetts 02139, United States., Chan L; Department of Chemical Engineering, Massachusetts Institute of Technology , Cambridge, Massachusetts 02139, United States., Kulik HJ; Department of Chemical Engineering, Massachusetts Institute of Technology , Cambridge, Massachusetts 02139, United States.
Source:
The journal of physical chemistry letters [J Phys Chem Lett] 2018 Mar 01; Vol. 9 (5), pp. 1064-1071. Date of Electronic Publication: 2018 Feb 15.
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: American Chemical Society Country of Publication: United States NLM ID: 101526034 Publication Model: Print-Electronic Cited Medium: Internet ISSN: 1948-7185 (Electronic) Linking ISSN: 19487185 NLM ISO Abbreviation: J Phys Chem Lett Subsets: PubMed not MEDLINE
Imprint Name(s):
Original Publication: Washington, D.C. : American Chemical Society
Entry Date(s):
Date Created: 20180210 Date Completed: 20180305 Latest Revision: 20220311
Update Code:
20260130
DOI:
10.1021/acs.jpclett.8b00170
PMID:
29425453
Database:
MEDLINE

Weitere Informationen

Machine learning (ML) has emerged as a powerful complement to simulation for materials discovery by reducing time for evaluation of energies and properties at accuracy competitive with first-principles methods. We use genetic algorithm (GA) optimization to discover unconventional spin-crossover complexes in combination with efficient scoring from an artificial neural network (ANN) that predicts spin-state splitting of inorganic complexes. We explore a compound space of over 5600 candidate materials derived from eight metal/oxidation state combinations and a 32-ligand pool. We introduce a strategy for error-aware ML-driven discovery by limiting how far the GA travels away from the nearest ANN training points while maximizing property (i.e., spin-splitting) fitness, leading to discovery of 80% of the leads from full chemical space enumeration. Over a 51-complex subset, average unsigned errors (4.5 kcal/mol) are close to the ANN's baseline 3 kcal/mol error. By obtaining leads from the trained ANN within seconds rather than days from a DFT-driven GA, this strategy demonstrates the power of ML for accelerating inorganic material discovery.