Machine Learning for Vibrational Spectroscopy via Divide-and-Conquer
Semiclassical Initial Value Representation Molecular Dynamics with
Application to N-Methylacetamide
- URL: http://arxiv.org/abs/2101.03927v1
- Date: Mon, 11 Jan 2021 14:47:33 GMT
- Title: Machine Learning for Vibrational Spectroscopy via Divide-and-Conquer
Semiclassical Initial Value Representation Molecular Dynamics with
Application to N-Methylacetamide
- Authors: Michele Gandolfi, Alessandro Rognoni, Chiara Aieta, Riccardo Conte,
Michele Ceotto
- Abstract summary: A machine learning algorithm for partitioning the nuclear vibrational space into subspaces is introduced.
The subdivision criterion is based on Liouville's theorem, i.e. best preservation of the unitary of the reduced dimensionality Jacobian determinant.
The algorithm is applied to the divide-and-conquer semiclassical calculation of the power spectrum of 12-atom trans-N-Methylacetamide.
- Score: 56.515978031364064
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A machine learning algorithm for partitioning the nuclear vibrational space
into subspaces is introduced. The subdivision criterion is based on Liouville's
theorem, i.e. best preservation of the unitary of the reduced dimensionality
Jacobian determinant within each subspace along a probe full-dimensional
classical trajectory. The algorithm is based on the idea of evolutionary
selection and it is implemented through a probability graph representation of
the vibrational space partitioning. We interface this customized version of
genetic algorithms with our divide-and-conquer semiclassical initial value
representation method for calculation of molecular power spectra. First, we
benchmark the algorithm by calculating the vibrational power spectra of two
model systems, for which the exact subspace division is known. Then, we apply
it to the calculation of the power spectrum of methane. Exact calculations and
full-dimensional semiclassical spectra of this small molecule are available and
provide an additional test of the accuracy of the new approach. Finally, the
algorithm is applied to the divide-and-conquer semiclassical calculation of the
power spectrum of 12-atom trans-N-Methylacetamide.
Related papers
- Spectral Densities, Structured Noise and Ensemble Averaging within Open Quantum Dynamics [0.0]
We present advances for the Numerical Integration of Schr"odinger Equation (NISE)
We introduce a modified ensemble-averaging procedure that improves the long-time behavior of the thermalized variant of the NISE scheme.
We demonstrate how to use the NISE in conjunction with (highly) structured spectral densities by utilizing a noise generating algorithm for arbitrary structured noise.
arXiv Detail & Related papers (2024-10-05T22:00:19Z) - Energy-filtered excited states and real-time dynamics served in a contour integral [0.0]
The Cauchy integral formula (CIF) can be used to represent holomorphic functions of diagonalizable operators on a finite domain.
I showcase a novel real-time electron dynamics (RT-EOM-CCSD) algorithm based on the CIF form of the exponential time-evolution operator.
arXiv Detail & Related papers (2024-09-11T15:39:50Z) - Gaussian Entanglement Measure: Applications to Multipartite Entanglement
of Graph States and Bosonic Field Theory [50.24983453990065]
An entanglement measure based on the Fubini-Study metric has been recently introduced by Cocchiarella and co-workers.
We present the Gaussian Entanglement Measure (GEM), a generalization of geometric entanglement measure for multimode Gaussian states.
By providing a computable multipartite entanglement measure for systems with a large number of degrees of freedom, we show that our definition can be used to obtain insights into a free bosonic field theory.
arXiv Detail & Related papers (2024-01-31T15:50:50Z) - Simulating optical linear absorption for mesoscale molecular aggregates:
an adaptive hierarchy of pure states approach [0.0]
We present a new method for calculating linear absorption spectra for large molecular aggregates, called dyadic adaptive HOPS (DadHOPS)
This method combines the adaptive HOPS framework, which uses locality to improve computational scaling, with the dyadic HOPS method previously developed to calculate linear and non-linear spectroscopic signals.
arXiv Detail & Related papers (2023-01-09T23:26:25Z) - Calculating non-linear response functions for multi-dimensional
electronic spectroscopy using dyadic non-Markovian quantum state diffusion [68.8204255655161]
We present a methodology for simulating multi-dimensional electronic spectra of molecular aggregates with coupling electronic excitation to a structured environment.
A crucial aspect of our approach is that we propagate the NMQSD equation in a doubled system Hilbert space but with the same noise.
arXiv Detail & Related papers (2022-07-06T15:30:38Z) - Reinforcement Learning from Partial Observation: Linear Function Approximation with Provable Sample Efficiency [111.83670279016599]
We study reinforcement learning for partially observed decision processes (POMDPs) with infinite observation and state spaces.
We make the first attempt at partial observability and function approximation for a class of POMDPs with a linear structure.
arXiv Detail & Related papers (2022-04-20T21:15:38Z) - Hybrid Quantum-Classical Boson Sampling Algorithm for Molecular
Vibrationally Resolved Electronic Spectroscopy with Duschinsky Rotation and
Anharmonicity [0.0]
We propose a hybrid quantum-classical sampling algorithm to calculate the optical spectrum for complex molecules.
A near-term quantum advantage for realistic molecular spectroscopy simulation is proposed.
arXiv Detail & Related papers (2022-03-21T07:59:20Z) - Gaussian Process Regression for Absorption Spectra Analysis of Molecular
Dimers [68.8204255655161]
We discuss an approach based on a machine learning technique, where the parameters for the numerical calculations are chosen from Gaussian Process Regression (GPR)
This approach does not only quickly converge to an optimal parameter set, but in addition provides information about the complete parameter space.
We find that indeed the GPR gives reliable results which are in agreement with direct calculations of these parameters using quantum chemical methods.
arXiv Detail & Related papers (2021-12-14T17:46:45Z) - Simulation of absorption spectra of molecular aggregates: a Hierarchy of
Stochastic Pure States approach [68.8204255655161]
hierarchy of pure states (HOPS) provides a formally exact solution based on local, trajectories.
Exploiting the localization of HOPS for the simulation of absorption spectra in large aggregares requires a formulation in terms of normalized trajectories.
arXiv Detail & Related papers (2021-11-01T16:59:54Z) - Semiclassical Approach to Photophysics Beyond Kasha's Rule and Vibronic
Spectroscopy Beyond the Condon Approximation. The Case of Azulene [0.0]
We study the photophysics and spectroscopy of azulene and other non-conventional molecules.
We develop a systematic, general, and efficient computational approach combining semiclassical dynamics of nuclei with ab initio electronic structure.
We find that accuracy of the evaluated spectra requires the treatment of anharmonicity, Herzberg--Teller, and mode-mixing effects.
arXiv Detail & Related papers (2020-01-23T09:08:29Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.