2019 AIChE Annual Meeting
(193f) Parametric Surrogate Model Generation Using Adaptive Sparse Grid Interpolation
The presented work tests the performance of a new surrogate modeling algorithm that is based on Smolyak sparse-grids. The algorithm performs adaptive global search of the multidimensional space using a Smolyak grid and the collected samples are used to fit polynomial interpolants as was proposed as part of a recently developed surrogate-based optimization algorithm (Kieslich, Boukouvala, Floudas, JOGO 2018). Rather than searching for a minimum value of a black-box function, the proposed algorithm utilizes an error surrogate based on the difference between interpolants of differing accuracy to predict which regions have the most error compared to the simulation. Numerical integration of the error surrogate is used to approximate the remaining error between the surrogate model and the simulation. The developed algorithm adaptively refines the grid by collecting new points in regions with high predicted error, and convergences when the approximated remaining error is below a selected error tolerance. The algorithm is tested first using a large set of benchmark problems and its performance is compared to existing approaches for surrogate modeling, such as kriging functions and neural networks. Additionally, we will show the performance of the developed method using case studies based on systems of ordinary and partial differential equations.