2017 Spring Meeting and 13th Global Congress on Process Safety
(23a) Constrained Grey-Box Multi-Objective Optimization Framework for Optimal Design of Energy Systems
Authors
Derivative-Free Optimization (DFO) methods are commonly utilized for the optimization of models that lack the closed-form equations or models that strongly rely on input-output data. We have previously introduced the constrained grey-box optimization algorithm called ARGONAUT [2] that couples tractable surrogate approximations, which accurately represent any unknown correlations, with the state-of-the art Mixed-Integer Nonlinear Programming (MINLP) global optimization solver ANTIGONE. [3] In this work, we further expand the existing algorithm to handle mixed-integer programming and multi-objective optimization problems, and test the proposed framework on a case study based on the energy system design for commercial buildings such as a supermarket. [4] We provide solutions to two cases; (a) optimal design based on the single-objective economic behavior or the environmental impact (b) optimal design based on the multi-objective design criteria, simultaneous optimization of economic and environmental behavior. We demonstrate that our framework enables optimization of expensive simulation-based models under multiple competing objectives in a computationally efficient way. The results are presented in the form of Pareto-frontier, compare favorably to the model-based solution in [4].
References:
[1] Boukouvala, F.; Misener, R.; Floudas, C. A., Global optimization advances in Mixed-Integer Nonlinear Programming, MINLP, and Constrained Derivative-Free Optimization, CDFO. European Journal of Operational Research 2016, 252, (3), 701-727.
[2] Boukouvala, F.; Floudas, C. A., ARGONAUT: AlgoRithms for Global Optimization of coNstrAined grey-box compUTational problems. Optimization Letters 2016, 1-19.
[3] Misener, R.; Floudas, C., ANTIGONE: Algorithms for coNTinuous / Integer Global Optimization of Nonlinear Equations. Journal of Global Optimization 2014, 59, (2-3), 503-526.
[4] Liu, P.; Pistikopoulos, E.N.; Li, Z., An energy systems engineering approach to the optimal design of energy systems in commercial buildings, Energy Policy 2010, 38, (8), 4224â4231.