2020 Virtual AIChE Annual Meeting
(280a) Mixed-Integer Adjustable Robust Optimization through Multi-Parametric Programming
Authors
In this work, we propose a novel method for the derivation of generalized affine decision rules for mixed-integer linear ARO problems under exogenous uncertainty through multi-parametric programming, which leads to the exact and global solution of the ARO problem. The proposed approach is based on our previous work on the solution of mixed-integer linear ARO problems under endogenous uncertainty [4]. The problem is treated as a multi-level programming problem [5] and it is then solved using B-POP, a novel algorithm and toolbox for the exact and global solution of multi-level mixed-integer linear or quadratic programming problems [6, 7, 8]. The main idea behind the proposed approach is to solve the lower optimization level of the ARO problem parametrically at the extrema realizations of the uncertainty, by considering âhere-and-nowâ variables as parameters. This will result in a set of affine decision rules for the âwait-and-seeâ variables as a function of âhere-and-nowâ variables, that are optimal for their entire feasible space. Several numerical problems are solved to illustrate the computational performance of the developed algorithm. Additionally, a case study on the robust solution of a plant design and operation problem is considered, where the design related decisions are treated as âhere-and-nowâ variables, the operation or scheduling decisions are treated as âwait-and-seeâ variables, while price and demand fluctuations are considered as uncertainties.
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