Using machine learning to map simulated noisy and laser-limited multidimensional spectra to molecular electronic couplings
- URL: http://arxiv.org/abs/2503.15706v1
- Date: Wed, 19 Mar 2025 21:40:00 GMT
- Title: Using machine learning to map simulated noisy and laser-limited multidimensional spectra to molecular electronic couplings
- Authors: Jonathan D. Schultz, Kelsey A. Parker, Bashir Sbaiti, David N. Beratan,
- Abstract summary: We show how factors associated with experimental 2D spectral data influence the ability of NNs to map simulated 2DES spectra onto intermolecular electronic couplings.<n>In stark contrast to human-based analyses of 2DES data, we find that the NN accuracy improves significantly when the data are constrained by the bandwidth and center frequency of the pump pulses.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Two-dimensional electronic spectroscopy (2DES) has enabled significant discoveries in both biological and synthetic energy-transducing systems. Although deriving chemical information from 2DES is a complex task, machine learning (ML) offers exciting opportunities to translate complicated spectroscopic data into physical insight. Recent studies have found that neural networks (NNs) can map simulated multidimensional spectra to molecular-scale properties with high accuracy. However, simulations often do not capture experimental factors that influence real spectra, including noise and suboptimal pulse resonance conditions, bringing into question the experimental utility of NNs trained on simulated data. Here, we show how factors associated with experimental 2D spectral data influence the ability of NNs to map simulated 2DES spectra onto underlying intermolecular electronic couplings. By systematically introducing multisourced noise into a library of 356000 simulated 2D spectra, we show that noise does not hamper NN performance for spectra exceeding threshold signal-to-noise ratios (SNR) (> 6.6 if background noise dominates vs. > 2.5 for intensity-dependent noise). In stark contrast to human-based analyses of 2DES data, we find that the NN accuracy improves significantly (ca. 84% $\rightarrow$ 96%) when the data are constrained by the bandwidth and center frequency of the pump pulses. This result is consistent with the NN learning the optical trends described by Kasha's theory of molecular excitons. Our findings convey positive prospects for adapting simulation-trained NNs to extract molecular properties from inherently imperfect experimental 2DES data. More broadly, we propose that machine-learned perspectives of nonlinear spectroscopic data may produce unique and, perhaps, counterintuitive guidelines for experimental design.
Related papers
- Fourier Neural Operators for Learning Dynamics in Quantum Spin Systems [77.88054335119074]
We use FNOs to model the evolution of random quantum spin systems.
We apply FNOs to a compact set of Hamiltonian observables instead of the entire $2n$ quantum wavefunction.
arXiv Detail & Related papers (2024-09-05T07:18:09Z) - Ambiguous Resonances in Multipulse Quantum Sensing with Nitrogen Vacancy Centers [0.2686836573610359]
We experimentally characterized three of these effects present in single nitrogen vacancy centers in diamond.
We also developed a numerical simulations model without rotating wave approximation, showing robust correlation to the experimental data.
Although focused with nitrogen vacancy centers and dynamical decoupling sequences, these results and the developed model can potentially be applied to other solid state spins and quantum sensing techniques.
arXiv Detail & Related papers (2024-07-12T16:35:36Z) - Machine Learning for Exoplanet Detection in High-Contrast Spectroscopy: Revealing Exoplanets by Leveraging Hidden Molecular Signatures in Cross-Correlated Spectra with Convolutional Neural Networks [0.0]
Cross-correlation for spectroscopy uses molecular templates to isolate a planet's spectrum from its host star.
We introduce machine learning for cross-correlation spectroscopy (MLCCS)
The method aims to leverage weak assumptions on exoplanet characterisation, such as the presence of specific molecules in atmospheres, to improve detection sensitivity for exoplanets.
arXiv Detail & Related papers (2024-05-22T09:25:58Z) - Momentum Diminishes the Effect of Spectral Bias in Physics-Informed
Neural Networks [72.09574528342732]
Physics-informed neural network (PINN) algorithms have shown promising results in solving a wide range of problems involving partial differential equations (PDEs)
They often fail to converge to desirable solutions when the target function contains high-frequency features, due to a phenomenon known as spectral bias.
In the present work, we exploit neural tangent kernels (NTKs) to investigate the training dynamics of PINNs evolving under gradient descent with momentum (SGDM)
arXiv Detail & Related papers (2022-06-29T19:03:10Z) - The Spectral Bias of Polynomial Neural Networks [63.27903166253743]
Polynomial neural networks (PNNs) have been shown to be particularly effective at image generation and face recognition, where high-frequency information is critical.
Previous studies have revealed that neural networks demonstrate a $textitspectral bias$ towards low-frequency functions, which yields faster learning of low-frequency components during training.
Inspired by such studies, we conduct a spectral analysis of the Tangent Kernel (NTK) of PNNs.
We find that the $Pi$-Net family, i.e., a recently proposed parametrization of PNNs, speeds up the
arXiv Detail & Related papers (2022-02-27T23:12:43Z) - Unsupervised Spectral Unmixing For Telluric Correction Using A Neural
Network Autoencoder [58.720142291102135]
We present a neural network autoencoder approach for extracting a telluric transmission spectrum from a large set of high-precision observed solar spectra from the HARPS-N radial velocity spectrograph.
arXiv Detail & Related papers (2021-11-17T12:54:48Z) - Visualizing spinon Fermi surfaces with time-dependent spectroscopy [62.997667081978825]
We propose applying time-dependent photo-emission spectroscopy, an established tool in solid state systems, in cold atom quantum simulators.
We show in exact diagonalization simulations of the one-dimensional $t-J$ model that the spinons start to populate previously unoccupied states in an effective band structure.
The dependence of the spectral function on the time after the pump pulse reveals collective interactions among spinons.
arXiv Detail & Related papers (2021-05-27T18:00:02Z) - Learning the exchange-correlation functional from nature with fully
differentiable density functional theory [0.0]
We train a neural network to replace the exchange-correlation functional within a fully-differentiable three-dimensional Kohn-Sham density functional theory framework.
Our trained exchange-correlation network provided improved prediction of atomization and ionization energies across a collection of 110 molecules.
arXiv Detail & Related papers (2021-02-08T14:25:10Z) - Deep learning and high harmonic generation [0.0]
We explore the utility of various deep neural networks (NNs) when applied to high harmonic generation (HHG) scenarios.
First, we train the NNs to predict the time-dependent dipole and spectra of HHG emission from reduced-dimensionality models of di- and triatomic systems.
We then demonstrate that transfer learning can be applied to our networks to expand the range of applicability of the networks.
arXiv Detail & Related papers (2020-12-18T16:13:17Z) - Neural network quantum state tomography in a two-qubit experiment [52.77024349608834]
Machine learning inspired variational methods provide a promising route towards scalable state characterization for quantum simulators.
We benchmark and compare several such approaches by applying them to measured data from an experiment producing two-qubit entangled states.
We find that in the presence of experimental imperfections and noise, confining the variational manifold to physical states greatly improves the quality of the reconstructed states.
arXiv Detail & Related papers (2020-07-31T17:25:12Z) - Heuristic machinery for thermodynamic studies of SU(N) fermions with
neural networks [1.1910997817688513]
We introduce a machinery by using machine learning analysis.
We use our machinery to guide the thermodynamic studies in the density profile of ultracold fermions interacting within SU($N$) spin symmetry.
Our machine learning framework shows a potential to validate theoretical descriptions of SU($N$) Fermi liquids.
arXiv Detail & Related papers (2020-06-25T02:31:55Z)
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.