Learning Large Neighborhood Search for Maritime Inventory Routing Optimization
Learning Large Neighborhood Search for Maritime Inventory Routing Optimization
Maritime inventory routing optimization is an important yet challenging combinatorial optimization problem. We propose a machine learning-based local search approach for finding feasible solutions of large-scale maritime inventory routing optimization problems. Given the combinatorial complexity of the problems, we integrate a graph neural network-based neighborhood selection method to enhance local search efficiency. Our approach enables a structured exploration of different neighborhoods by imitating an optimization-based expert neighborhood selection policy, improving solution quality while maintaining computational efficiency. Through extensive computational experiments on realistic instances, we demonstrate that our method outperforms direct mixed-integer programming as well as benchmark local search approaches in solution time and solution quality.
Rui Chen、Mustafa Kilinc、Andrea Lodi、Defeng Liu、Nan Jiang、Rishabh Gupta
水路运输工程
Rui Chen,Mustafa Kilinc,Andrea Lodi,Defeng Liu,Nan Jiang,Rishabh Gupta.Learning Large Neighborhood Search for Maritime Inventory Routing Optimization[EB/OL].(2025-08-21)[2025-09-02].https://arxiv.org/abs/2502.15244.点此复制
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