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A hybrid algorithm for large-scale non-separable nonlinear multicommodity flow problems

  • Cranfield University

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Abstract

We propose an approach for large-scale non-separable nonlinear multicommodity flow problems by solving a sequence of subproblems which can be addressed by commercial solvers. Using a combination of solution methods such as modified gradient projection, shortest path algorithm and golden section search, the approach can handle general problem instances, including those with (i) non-separable cost, (ii) objective function not available analytically as polynomial but are evaluated using black-boxes, and (iii) additional side constraints not of network flow types. Implemented as a toolbox in commercial solvers, it allows researchers and practitioners, currently conversant with linear instances, to easily manage large-scale convex instances as well. In this article, we compared the proposed algorithm with alternative approaches in the literature, covering both theory and large test cases. New test cases with non-separable convex costs and non-network flow side constraints are also presented and evaluated. The toolbox is available free for academic use upon request.
Original languageEnglish
Pages (from-to)1-25
JournalJournal of Algorithms and Computational Technology
Volume17
DOIs
Publication statusPublished - 6 Mar 2023

Keywords

  • Hybrid Algorithm
  • Large-scale optimization
  • Multicommodity Flows
  • Non-Separable Cost
  • Nonlinear Cost
  • hybrid algorithm
  • multicommodity flows
  • nonlinear cost
  • non-separable cost

ASJC Scopus subject areas

  • Numerical Analysis
  • Computational Mathematics
  • Applied Mathematics

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