Machine learning enables long time scale molecular photodynamics simulations
Photo-induced processes are fundamental in nature but accurate simulations of their dynamics are seriously limited by the cost of the underlying quantum chemical calculations, hampering their application for long time scales. Here we introduce a method based on machine learning to overcome this bott...
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Veröffentlicht in: | Chemical science (Cambridge) 2019-09, Vol.1 (35), p.81-817 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Photo-induced processes are fundamental in nature but accurate simulations of their dynamics are seriously limited by the cost of the underlying quantum chemical calculations, hampering their application for long time scales. Here we introduce a method based on machine learning to overcome this bottleneck and enable accurate photodynamics on nanosecond time scales, which are otherwise out of reach with contemporary approaches. Instead of expensive quantum chemistry during molecular dynamics simulations, we use deep neural networks to learn the relationship between a molecular geometry and its high-dimensional electronic properties. As an example, the time evolution of the methylenimmonium cation for one nanosecond is used to demonstrate that machine learning algorithms can outperform standard excited-state molecular dynamics approaches in their computational efficiency while delivering the same accuracy.
Machine learning enables excited-state molecular dynamics simulations including nonadiabatic couplings on nanosecond time scales. |
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ISSN: | 2041-6520 2041-6539 |
DOI: | 10.1039/c9sc01742a |