A primal heuristic for optimizing the topology of gas networks based on dual information
Author(s) -
Jesco Humpola,
Armin Fügenschuh,
Thomas Lehmann
Publication year - 2014
Publication title -
euro journal on computational optimization
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.95
H-Index - 14
eISSN - 2192-4414
pISSN - 2192-4406
DOI - 10.1007/s13675-014-0029-0
Subject(s) - mathematical optimization , karush–kuhn–tucker conditions , heuristics , solver , heuristic , computer science , nonlinear system , nonlinear programming , integer programming , relaxation (psychology) , network topology , linear programming , mathematics , topology (electrical circuits) , psychology , social psychology , physics , quantum mechanics , combinatorics , operating system
We present a novel heuristic to identify feasible solutions of a mixed-integer nonlinear programming problem arising in natural gas transportation: the selection of new pipelines to enhance the network’s capacity to a desired level in a cost-efficient way. We solve this problem in a linear programming based branch-and-cut approach, where we deal with the nonlinearities by linear outer approximation and spatial branching. At certain nodes of the branching tree, we compute a KKT point of a nonlinear relaxation. Based on the information from the KKT point we alter some of the binary variables in a locally promising way exploiting our problem-specific structure. On a test set of real-world instances, we are able to increase the chance of identifying feasible solutions by some order of magnitude compared to standard MINLP heuristics that are already built in the general-purpose MINLP solver SCIP.
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