Quantum Hardware-Enabled Molecular Dynamics via Transfer Learning
The ability to perform ab initio molecular dynamics simulations using potential energies calculated on quantum computers would allow virtually exact dynamics for chemical and biochemical systems, with substantial impacts on the fields of catalysis and biophysics. However, noisy hardware, the costs o...
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Zusammenfassung: | The ability to perform ab initio molecular dynamics simulations using
potential energies calculated on quantum computers would allow virtually exact
dynamics for chemical and biochemical systems, with substantial impacts on the
fields of catalysis and biophysics. However, noisy hardware, the costs of
computing gradients, and the number of qubits required to simulate large
systems present major challenges to realizing the potential of dynamical
simulations using quantum hardware. Here, we demonstrate that some of these
issues can be mitigated by recent advances in machine learning. By combining
transfer learning with techniques for building machine-learned potential energy
surfaces, we propose a new path forward for molecular dynamics simulations on
quantum hardware. We use transfer learning to reduce the number of energy
evaluations that use quantum hardware by first training models on larger, less
accurate classical datasets and then refining them on smaller, more accurate
quantum datasets. We demonstrate this approach by training machine learning
models to predict a molecule's potential energy using Behler-Parrinello neural
networks. When successfully trained, the model enables energy gradient
predictions necessary for dynamics simulations that cannot be readily obtained
directly from quantum hardware. To reduce the quantum resources needed, the
model is initially trained with data derived from low-cost techniques, such as
Density Functional Theory, and subsequently refined with a smaller dataset
obtained from the optimization of the Unitary Coupled Cluster ansatz. We show
that this approach significantly reduces the size of the quantum training
dataset while capturing the high accuracies needed for quantum chemistry
simulations. |
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DOI: | 10.48550/arxiv.2406.08554 |