Systematic parameter inference in stochastic mesoscopic modeling
Huan Lei, Xiu Yang, Zhen Li, George Karniadakis

TL;DR
This paper introduces an efficient method using generalized polynomial chaos and compressive sensing to infer optimal parameters in mesoscopic stochastic fluid models, reducing computational costs and enabling better model calibration.
Contribution
The paper presents a novel approach combining gPC and compressive sensing for parameter inference in mesoscopic simulations, improving efficiency and accuracy over traditional methods.
Findings
Comparable accuracy to probabilistic collocation method
Reduced number of simulation samples needed
Ability to identify parameter redundancies and optimize models
Abstract
We propose a method to efficiently determine the optimal coarse-grained force field in mesoscopic stochastic simulations of Newtonian fluid and polymer melt systems modeled by dissipative particle dynamics (DPD) and energy conserving dissipative particle dynamics (eDPD). The response surfaces of various target properties (viscosity, diffusivity, pressure, etc.) with respect to model parameters are constructed based on the generalized polynomial chaos (gPC) expansion using simulation results on sampling points (e.g., individual parameter sets). To alleviate the computational cost to evaluate the target properties, we employ the compressive sensing method to compute the coefficients of the dominant gPC terms given the prior knowledge that the coefficients are sparse. The proposed method shows comparable accuracy with the standard probabilistic collocation method (PCM) while it imposes a…
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