TY - JOUR
T1 - Closed-loop transfer enables artificial intelligence to yield chemical knowledge
AU - Angello, Nicholas H.
AU - Friday, David M.
AU - Hwang, Changhyun
AU - Yi, Seungjoo
AU - Cheng, Austin H.
AU - Torres-Flores, Tiara C.
AU - Jira, Edward R.
AU - Wang, Wesley
AU - Aspuru-Guzik, Alán
AU - Burke, Martin D.
AU - Schroeder, Charles M.
AU - Diao, Ying
AU - Jackson, Nicholas E.
N1 - Publisher Copyright:
© The Author(s), under exclusive licence to Springer Nature Limited 2024.
PY - 2024/9/12
Y1 - 2024/9/12
N2 - Artificial intelligence-guided closed-loop experimentation has emerged as a promising method for optimization of objective functions1,2, but the substantial potential of this traditionally black-box approach to uncovering new chemical knowledge has remained largely untapped. Here we report the integration of closed-loop experiments with physics-based feature selection and supervised learning, denoted as closed-loop transfer (CLT), to yield chemical insights in parallel with optimization of objective functions. CLT was used to examine the factors dictating the photostability in solution of light-harvesting donor–acceptor molecules used in a variety of organic electronics applications, and showed fundamental insights including the importance of high-energy regions of the triplet state manifold. This was possible following automated modular synthesis and experimental characterization of only around 1.5% of the theoretical chemical space. This physics-informed model for photostability was strengthened using multiple experimental test sets and validated by tuning the triplet excited-state energy of the solvent to break out of the observed plateau in the closed-loop photostability optimization process. Further applications of CLT to additional materials systems support the generalizability of this strategy for augmenting closed-loop strategies. Broadly, these findings show that combining interpretable supervised learning models and physics-based features with closed-loop discovery processes can rapidly provide fundamental chemical insights.
AB - Artificial intelligence-guided closed-loop experimentation has emerged as a promising method for optimization of objective functions1,2, but the substantial potential of this traditionally black-box approach to uncovering new chemical knowledge has remained largely untapped. Here we report the integration of closed-loop experiments with physics-based feature selection and supervised learning, denoted as closed-loop transfer (CLT), to yield chemical insights in parallel with optimization of objective functions. CLT was used to examine the factors dictating the photostability in solution of light-harvesting donor–acceptor molecules used in a variety of organic electronics applications, and showed fundamental insights including the importance of high-energy regions of the triplet state manifold. This was possible following automated modular synthesis and experimental characterization of only around 1.5% of the theoretical chemical space. This physics-informed model for photostability was strengthened using multiple experimental test sets and validated by tuning the triplet excited-state energy of the solvent to break out of the observed plateau in the closed-loop photostability optimization process. Further applications of CLT to additional materials systems support the generalizability of this strategy for augmenting closed-loop strategies. Broadly, these findings show that combining interpretable supervised learning models and physics-based features with closed-loop discovery processes can rapidly provide fundamental chemical insights.
UR - https://www.scopus.com/pages/publications/85202491381
UR - https://www.scopus.com/inward/citedby.url?scp=85202491381&partnerID=8YFLogxK
U2 - 10.1038/s41586-024-07892-1
DO - 10.1038/s41586-024-07892-1
M3 - Article
C2 - 39198655
AN - SCOPUS:85202491381
SN - 0028-0836
VL - 633
SP - 351
EP - 358
JO - Nature
JF - Nature
IS - 8029
ER -