2016 AIChE Annual Meeting
(74d) GOSSIP: Decomposition Software for the Global Optimization of Nonconvex Two-Stage Stochastic Mixed-Integer Nonlinear Programs
Authors
GOSSIP includes subroutines for reformulating user input, detecting special structure, automatic construction of the subproblems required by the decomposition techniques, automatic construction of relaxations, and bounds tightening [9â??12]. The decomposition framework includes implementations of nonconvex generalized Benders decomposition (NGBD) [7, 8], Lagrangian relaxation [1, 13], and a modified Lagrangian relaxation algorithm. The option of solving the extensive form of the two-stage stochastic MINLP using a global optimization solver is also included. Solver links to several state-of-the-art optimization software are part of GOSSIP and are used to solve the various subproblems used by the decomposition techniques.
A library of test instances of two-stage stochastic MINLPs from the literature is composed, and the capabilities of GOSSIP are demonstrated over this diverse set of problems.
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