2023 AIChE Annual Meeting
(15f) Taking the Human out of the Decomposition-Based Optimization Loop Via Artificial Intelligence and Network Science
Authors
In this work, we propose an overarching conceptual framework and an automated workflow for addressing the above challenges for generic mixed integer nonlinear programming problems (MINLPs). The proposed framework and toolbox, called Learning to Decompose (L2D), combines network science, optimization theory, and machine learning to determine: (i) how to decompose an optimization problem, (ii) how to initialize the solution algorithm for the decomposed problem, and (iii) when to apply a decomposition-based solution algorithm over a monolithic one. On the first task, stochastic blockmodeling [11] is used to âlearnâ the underlying structure of an optimization problem based on appropriate network representations of the problem. The learned structure is linked to the appropriate distributed or hierarchical decomposition-based solution method. On the second task, active learning [12] is used to efficiently learn a surrogate model that approximates the effect of the algorithm configuration on the solution time. This surrogate is used to select the best configuration of the decomposition-based solution algorithm. Finally, on the third task, a graph classification approach is developed to determine a-priori if a decomposition-based solution should be implemented over a monolithic one. The graph classification approach decides whether a decomposition-based solution method should be used by considering the detailed structural and functional interaction between the variables and the constraints of the problem.
The proposed framework is applied to multiple case studies, including the solution of benchmark MINLP problems and mixed integer economic model predictive control problems.
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