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Leveraging graph neural networks and multi-agent reinforcement learning for inventory control in supply chains

Niki Kotecha, Antonio del Rio Chanona

2025Computers & Chemical Engineering22 citationsDOIOpen Access PDF

Abstract

Inventory control in modern supply chains has attracted significant attention due to the increasing number of disruptive shocks and the challenges posed by complex dynamics, uncertainties, and limited collaboration. Traditional methods, which often rely on static parameters, struggle to adapt to changing environments. This paper proposes a Multi-Agent Reinforcement Learning (MARL) framework with Graph Neural Networks (GNNs) for state representation to address these limitations. Our approach redefines the action space by parameterizing heuristic inventory control policies, into an adaptive, continuous form where parameters dynamically adjust based on system conditions and avoid combinatorial explosion typical of discrete actions. By leveraging the inherent graph structure of supply chains, our framework enables agents to learn the system’s topology, and we employ a centralized learning, decentralized execution scheme that allows agents to learn collaboratively while overcoming information-sharing constraints. Additionally, we incorporate global mean pooling and regularization techniques to enhance performance. We test the capabilities of our proposed approach on four different supply chain configurations and conduct a sensitivity analysis. This work paves the way for utilizing MARL-GNN frameworks to improve inventory management in complex, decentralized supply chain environments .

Topics & Concepts

Reinforcement learningSupply chainArtificial neural networkComputer scienceInventory controlArtificial intelligenceGraphControl (management)Machine learningOperations researchEngineeringTheoretical computer scienceBusinessMarketingBlockchain Technology Applications and SecuritySupply Chain and Inventory ManagementAdvanced Queuing Theory Analysis
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