Solving the capacitated vehicle routing problem with time windows via graph convolutional network assisted tree search and quantum-inspired computing

IF 1.3 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Frontiers in Applied Mathematics and Statistics Pub Date : 2023-06-22 DOI:10.3389/fams.2023.1155356
Jorin Dornemann
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Abstract

Vehicle routing problems are a class of NP-hard combinatorial optimization problems which attract a lot of attention, as they have many practical applications. In recent years there have been new developments solving vehicle routing problems with the help of machine learning, since learning how to automatically solve optimization problems has the potential to provide a big leap in optimization technology. Prior work on solving vehicle routing problems using machine learning has mainly focused on auto-regressive models, which are connected to high computational costs when combined with classical exact search methods as the model has to be evaluated in every search step. This paper proposes a new method for approximately solving the capacitated vehicle routing problem with time windows (CVRPTW) via a supervised deep learning-based approach in a non-autoregressive manner. The model uses a deep neural network to assist finding solutions by providing a probability distribution which is used to guide a tree search, resulting in a machine learning assisted heuristic. The model is built upon a new neural network architecture, called graph convolutional network, which is particularly suited for deep learning tasks. Furthermore, a new formulation for the CVRPTW in form of a quadratic unconstrained binary optimization (QUBO) problem is presented and solved via quantum-inspired computing in cooperation with Fujitsu, where a learned problem reduction based upon the proposed neural network is applied to circumvent limitations concerning the usage of quantum computing for large problem instances. Computational results show that the proposed models perform very well on small and medium sized instances compared to state-of-the-art solution methods in terms of computational costs and solution quality, and outperform commercial solvers for large instances.
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用图卷积网络辅助树搜索和量子启发计算求解带时间窗的有容量车辆路径问题
车辆路径问题是一类NP-hard组合优化问题,因其具有广泛的实际应用而备受关注。近年来,在机器学习的帮助下解决车辆路线问题有了新的发展,因为学习如何自动解决优化问题有可能为优化技术提供一个巨大的飞跃。先前使用机器学习解决车辆路线问题的工作主要集中在自回归模型上,当与经典的精确搜索方法结合使用时,由于模型必须在每个搜索步骤中进行评估,因此计算成本很高。提出了一种基于监督深度学习的非自回归近似求解带时间窗的有能力车辆路径问题的新方法。该模型使用深度神经网络通过提供用于指导树搜索的概率分布来帮助寻找解决方案,从而产生机器学习辅助启发式。该模型建立在一种新的神经网络架构上,称为图卷积网络,特别适合深度学习任务。此外,CVRPTW以二次型无约束二进制优化(QUBO)问题的形式提出了一个新的公式,并通过与富士通合作的量子启发计算来解决,其中基于所提出的神经网络的学习问题约简应用于规避有关使用量子计算解决大问题实例的限制。计算结果表明,与最先进的解决方法相比,所提出的模型在计算成本和解决方案质量方面在中小型实例上表现非常好,并且在大型实例上优于商业解决方案。
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来源期刊
Frontiers in Applied Mathematics and Statistics
Frontiers in Applied Mathematics and Statistics Mathematics-Statistics and Probability
CiteScore
1.90
自引率
7.10%
发文量
117
审稿时长
14 weeks
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