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arxiv: 1803.04395 · v1 · pith:WQRNFOBUnew · submitted 2018-03-12 · ⚛️ physics.chem-ph

Transferable Molecular Charge Assignment Using Deep Neural Networks

classification ⚛️ physics.chem-ph
keywords chargehip-nnassignmentcalculationsmolecularmoleculesneuralpredictions
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We use HIP-NN, a neural network architecture that excels at predicting molecular energies, to predict atomic charges. The charge predictions are accurate over a wide range of molecules (both small and large) and for a diverse set of charge assignment schemes. To demonstrate the power of charge prediction on non-equilibrium geometries, we use HIP-NN to generate IR spectra from dynamical trajectories on a variety of molecules. The results are in good agreement with reference IR spectra produced by traditional theoretical methods. Critically, for this application, HIP-NN charge predictions are about 104 times faster than direct DFT charge calculations. Thus, ML provides a pathway to greatly increase the range of feasible simulations while retaining quantum-level accuracy. In summary, our results provide further evidence that machine learning can replicate high-level quantum calculations at a tiny fraction of the computational cost.

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