Quantum Optimization in Loc(Q)ation Science: QUBO Formulations, Benchmark Problems, and a Computational Study
- URL: http://arxiv.org/abs/2602.10951v1
- Date: Wed, 11 Feb 2026 15:39:26 GMT
- Title: Quantum Optimization in Loc(Q)ation Science: QUBO Formulations, Benchmark Problems, and a Computational Study
- Authors: Felix P. Broesamle, Stefan Nickel,
- Abstract summary: Quadratic Unconstrained Binary Optimization provides a unifying modeling framework for a broad class of $mathbfNP$-hard problems.<n>We develop QUBO formulations for several fundamental problems in location science, network design, and logistics.<n>These QUBO formulations serve as representative benchmark problems for assessing quantum algorithms and quantum hardware.
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- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recent advances in quantum computing and the increasing availability of quantum hardware have substantially enhanced the practical relevance of quantum approaches to discrete optimization. Among these, the Quadratic Unconstrained Binary Optimization (QUBO) formulation provides a unifying modeling framework for a broad class of $\mathbf{NP}$-hard problems and is naturally suited to quantum computing and quantum-inspired algorithms. Location science, network design, and logistics represent core application domains of discrete optimization, combining high practical impact with substantial computational challenges. In this work, we develop QUBO formulations for several fundamental problems in these domains, including a nonlinear integer formulation of the Discrete Ordered Median Problem (DOMP). Beyond their modeling relevance, these QUBO formulations serve as representative benchmark problems for assessing quantum algorithms and quantum hardware. We further derive a tight bound for the penalty parameter ensuring equivalence between the QUBO formulation and its underlying integer program. Finally, we conduct a comprehensive computational study using QAOA, WS-QAOA, and classical heuristics for QUBO instances of the $p$-Median Problem and the Fixed-Charge Facility Location Problem (FCFLP), and introduce two effective warm-start strategies for WS-QAOA based on its linear programming relaxation.
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