(747f) Learning Free Energy Landscapes Using Artificial Neural Networks
AIChE Annual Meeting
2017
2017 Annual Meeting
Computational Molecular Science and Engineering Forum
Data Mining and Machine Learning in Molecular Sciences II
Thursday, November 2, 2017 - 4:15pm to 4:27pm
Here we develop a powerful method wherein artificial neural networks (ANNs) are used to obtain the adaptive biasing potential, and thus learn free energy landscapes. As ANNs typically represent a form of supervised learning, we develop an iterative scheme which refines an unbiased estimator of a system's partition function. We demonstrate that this method is capable of rapidly adapting to complex free energy landscapes and is not prone to boundary or oscillation problems. The method offers a substantial degree of flexibility to the end-user in specifying the network architecture when the topological features of the FES of interest are not known. Importantly, because the bias learned by the ANN obtains the best continuous approximation of the free energy, we see a dramatic improvement in convergence, especially for poorly sampled states over currently available and broadly used techniques.