Title
Decomposition-based Inner- and Outer-Refinement Algorithms for Global Optimization.
Abstract
Traditional deterministic global optimization methods are often based on a Branch-and-Bound (BB) search tree, which may grow rapidly, preventing the method to find a good solution. Motivated by decomposition-based inner approximation (column generation) methods for solving transport scheduling problems with over 100 million variables, we present a new deterministic decomposition-based successive approximation method for general modular and/or sparse MINLPs. The new method, called Decomposition-based Inner- and Outer-Refinement, is based on a block-separable reformulation of the model into sub-models. It generates inner- and outer-approximations using column generation, which are successively refined by solving many easier MINLP and MIP subproblems in parallel (using BB), instead of searching over one (global) BB search tree. We present preliminary numerical results with Decogo (Decomposition-based Global Optimizer), a new parallel decomposition MINLP solver implemented in Python and Pyomo.
Year
DOI
Venue
2018
10.1007/s10898-018-0633-2
J. Global Optimization
Keywords
Field
DocType
Global optimization,Decomposition method,MINLP,Successive approximation,Column generation
Column generation,Mathematical optimization,Global optimization,Scheduling (computing),Algorithm,Decomposition method (constraint satisfaction),Modular design,Solver,Mathematics,Python (programming language),Search tree
Journal
Volume
Issue
ISSN
72
2
0925-5001
Citations 
PageRank 
References 
0
0.34
14
Authors
4
Name
Order
Citations
PageRank
Ivo Nowak100.68
Norman Breitfeld200.34
Eligius M. T. Hendrix313926.97
Grégoire Njacheun-Njanzoua400.34