Development of Scalable and Generalizable Machine Learned Force Field for Polymers
Shaswat Mohanty,
James Stevenson,
Andrea Browning
et al.
Abstract:Understanding and predicting the properties of polymers is vital to developing tailored polymer molecules for desired applications. Classical force fields may fail to capture key properties, for example, the transport properties of certain polymer systems such as polyethylene glycol. As a solution, we present an alternative potential energy surface, a charge recursive neural network (QRNN) model trained on DFT calculations made on smaller atomic clusters that generalizes well to oligomers comprising larger ato… Show more
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