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Sparsity-promoting Design under Uncertainty for a Char Combustion Process

Sparsity-promoting Design under Uncertainty for a Char Combustion Process

Authors :
Guo, Yulin
Lee, Dongjin
Kramer, Boris
Publication Year :
2024

Abstract

This work presents a design under uncertainty approach for a char combustion process in a limited-data setting, where simulations of the fluid-solid coupled system are computationally expensive. We integrate a polynomial dimensional decomposition (PDD) surrogate model into the design optimization and induce computational efficiency in three key areas. First, we transform the input random variables to have fixed probability measures, which eliminates the need to recalculate the PDD's basis functions associated with these probability quantities. Second, using the limited available data from a physics-based high-fidelity solver, we estimate the PDD coefficients via sparsity-promoting diffeomorphic modulation under observable response preserving homotopy regression. Third, we propose a single-pass surrogate model training process that avoids the need to generate new training data and update the PDD coefficients during the derivative-free optimization process. The results provide insights for optimizing process parameters to ensure consistently high energy production from char combustion.<br />Comment: 19 pages, 6 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.01429
Document Type :
Working Paper