An outer space branch-reduction-bound algorithm using second-order cone relaxation with regional reduction strategy for solving equivalent generalized linear multiplicative programming

IF 2.1 2区 数学 Q1 MATHEMATICS, APPLIED Journal of Computational and Applied Mathematics Pub Date : 2025-01-02 DOI:10.1016/j.cam.2024.116481
Xiaoli Huang , Yuelin Gao , Bo Zhang , Xia Liu
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Abstract

This paper proposes an outer space branch-reduction-bound algorithm by using the second-order cone relaxation technique with regional reduction strategy for solving generalized linear multiplicative programming (GLMP) problems. Firstly, by introducing additional variables and performing several equivalent transformations, the GLMP problem is converted into an equivalent problem that is easier to solve. Next, the non-convex quadratic constraint in the equivalent problem is handled utilizing the secant approximation method to formulate the second-order cone relaxation problem. Subsequently, we incorporate a regional reduction technique into the algorithm to enhance its computational performance and estimate the worst-case computational complexity, ensuring the attainment of the global optimal solution. Finally, numerical experimental results demonstrate that the proposed algorithm can efficiently search for the global ϵ-optimal solution of the test examples and can successfully solve high-dimensional GLMP problems with a small number of linear functions.
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CiteScore
5.40
自引率
4.20%
发文量
437
审稿时长
3.0 months
期刊介绍: The Journal of Computational and Applied Mathematics publishes original papers of high scientific value in all areas of computational and applied mathematics. The main interest of the Journal is in papers that describe and analyze new computational techniques for solving scientific or engineering problems. Also the improved analysis, including the effectiveness and applicability, of existing methods and algorithms is of importance. The computational efficiency (e.g. the convergence, stability, accuracy, ...) should be proved and illustrated by nontrivial numerical examples. Papers describing only variants of existing methods, without adding significant new computational properties are not of interest. The audience consists of: applied mathematicians, numerical analysts, computational scientists and engineers.
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