TY - JOUR
T1 - Predicting Two-Photon Absorption Spectra of Octupolar Molecules
T2 - A Deep-Learning Approach Based Exclusively on Molecular Structures
AU - Fu, Haoqing
AU - Zhang, Mengna
AU - Leng, Jiancai
AU - Hu, Wei
AU - Zhu, Tong
AU - Zhang, Yujin
N1 - Publisher Copyright:
© 2024 American Chemical Society
PY - 2024/1/18
Y1 - 2024/1/18
N2 - Octupolar molecules possessing a strong two-photon response are vital for numerous advanced applications. However, accurately predicting their two-photon absorption (TPA) spectra requires high-precision quantum chemical calculations, which are computationally expensive due to repeated simulations of molecular excited-state properties. To address this challenge, we introduce a deep learning approach capable of rapidly and accurately forecasting TPA spectra for octupolar molecules. By leveraging the geometric structure as an initial descriptor, we employ a graph neural network to predict the maximum two-photon transition wavelength and cross-section. Our model demonstrates a mean absolute percentage error of less than 4% compared to time-dependent density-functional theory calculations, effectively reproducing experimental observations. Notably, this deep learning technique is nearly 100 000 times faster than comparable quantum calculations, making it an efficient and cost-effective tool for simulating TPA properties of octupolar molecules. Furthermore, this method holds great promise for the high-throughput screening of exceptional TPA materials.
AB - Octupolar molecules possessing a strong two-photon response are vital for numerous advanced applications. However, accurately predicting their two-photon absorption (TPA) spectra requires high-precision quantum chemical calculations, which are computationally expensive due to repeated simulations of molecular excited-state properties. To address this challenge, we introduce a deep learning approach capable of rapidly and accurately forecasting TPA spectra for octupolar molecules. By leveraging the geometric structure as an initial descriptor, we employ a graph neural network to predict the maximum two-photon transition wavelength and cross-section. Our model demonstrates a mean absolute percentage error of less than 4% compared to time-dependent density-functional theory calculations, effectively reproducing experimental observations. Notably, this deep learning technique is nearly 100 000 times faster than comparable quantum calculations, making it an efficient and cost-effective tool for simulating TPA properties of octupolar molecules. Furthermore, this method holds great promise for the high-throughput screening of exceptional TPA materials.
UR - https://www.scopus.com/pages/publications/85182552995
U2 - 10.1021/acs.jpca.3c07324
DO - 10.1021/acs.jpca.3c07324
M3 - 文章
C2 - 38190616
AN - SCOPUS:85182552995
SN - 1089-5639
VL - 128
SP - 431
EP - 438
JO - Journal of Physical Chemistry A
JF - Journal of Physical Chemistry A
IS - 2
ER -