A Hybrid Solution Method for the Capacitated Vehicle Routing Problem Using a Quantum Annealer

Q1 Computer Science Frontiers in ICT Pub Date : 2018-11-18 DOI:10.3389/fict.2019.00013
Sebastian Feld, Christoph Roch, Thomas Gabor, Christian Seidel, F. Neukart, I. Galter, W. Mauerer, Claudia Linnhoff-Popien
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引用次数: 101

Abstract

The Capacitated Vehicle Routing Problem (CVRP) is an NP-optimization problem (NPO) that has been of great interest for decades for both, science and industry. The CVRP is a variant of the vehicle routing problem characterized by capacity constrained vehicles. The aim is to plan tours for vehicles to supply a given number of customers as efficiently as possible. The problem is the combinatorial explosion of possible solutions, which increases superexponentially with the number of customers. Classical solutions provide good approximations to the globally optimal solution. D-Wave's quantum annealer is a machine designed to solve optimization problems. This machine uses quantum effects to speed up computation time compared to classic computers. The problem on solving the CVRP on the quantum annealer is the particular formulation of the optimization problem. For this, it has to be mapped onto a quadratic unconstrained binary optimization (QUBO) problem. Complex optimization problems such as the CVRP can be translated to smaller subproblems and thus enable a sequential solution of the partitioned problem. This work presents a quantum-classic hybrid solution method for the CVRP. It clarifies whether the implemenation of such a method pays off in comparison to existing classical solution methods regarding computation time and solution quality. Several approaches to solving the CVRP are elaborated, the arising problems are discussed, and the results are evaluated in terms of solution quality and computation time.
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利用量子退火器求解有能力车辆路径问题的混合求解方法
有能力车辆路径问题(CVRP)是一个np优化问题(NPO),几十年来一直受到科学界和工业界的极大关注。CVRP是一种以车辆容量受限为特征的车辆路径问题的变体。其目的是为车辆规划行程,以尽可能高效地为给定数量的客户提供服务。问题在于可能解决方案的组合爆炸,它随着客户数量的增加而呈指数级增长。经典解提供了全局最优解的良好近似。D-Wave的量子退火炉是一种设计用来解决优化问题的机器。与经典计算机相比,这台机器利用量子效应来加快计算时间。求解量子退火炉上的CVRP问题是优化问题的特殊表述。为此,必须将其映射为二次型无约束二元优化(QUBO)问题。像CVRP这样的复杂优化问题可以转化为更小的子问题,从而实现分区问题的顺序解决。本文提出了CVRP的量子经典混合解方法。它阐明了在计算时间和求解质量方面,与现有的经典求解方法相比,这种方法的实现是否值得。阐述了求解CVRP的几种方法,讨论了出现的问题,并从求解质量和计算时间两方面对结果进行了评价。
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Frontiers in ICT
Frontiers in ICT Computer Science-Computer Networks and Communications
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