Electronic waste management faces critical challenges due to the complexity and variability of printed circuit board assemblies (PCBAs), which contain both high-value recoverable materials and hazardous components. Current inspection and recovery processes are predominantly manual and static, resulting in inefficiencies and limited scalability. This paper proposes a novel framework that integrates Graph Neural Networks (GNNs) with Reinforcement Learning (RL) to enable adaptive, real-time inspection sequencing and recovery decision-making for PCBAs. By modelling each board as a graph of interconnected components, the GNN encodes structural and defect-related information, providing a dynamic state representation for the RL agent. The agent then chooses a sequence of inspections or recovery strategies, such as reuse, repair or recycle, balancing the cost of diagnostics against the potential value of recovery. A case study on an industrial I/O device demonstrates the approach's effectiveness with simulations showing that the system learns profitable inspection and recovery policies under uncertainty while reducing unnecessary tests. A comparative analysis of state-of-the-art graph architectures reveals that Graph Attention Networks (GAT) outperform standard Graph Convolutional Networks (GCN). Results confirm the potential of GNN-RL integration to improve economic viability and sustainability in PCBA inspection for e-waste management.

Optimizing PCBA e-waste management: Intelligent inspection sequencing and recovery strategies using graph neural networks and Reinforcement Learning / Stamer, Florian; Lanza, Gisela; Puttero, Stefano; Galetto, Maurizio. - In: JOURNAL OF MANUFACTURING SYSTEMS. - ISSN 0278-6125. - ELETTRONICO. - 86:(2026), pp. 264-276. [10.1016/j.jmsy.2026.03.009]

Optimizing PCBA e-waste management: Intelligent inspection sequencing and recovery strategies using graph neural networks and Reinforcement Learning

Puttero, Stefano;Galetto, Maurizio
2026

Abstract

Electronic waste management faces critical challenges due to the complexity and variability of printed circuit board assemblies (PCBAs), which contain both high-value recoverable materials and hazardous components. Current inspection and recovery processes are predominantly manual and static, resulting in inefficiencies and limited scalability. This paper proposes a novel framework that integrates Graph Neural Networks (GNNs) with Reinforcement Learning (RL) to enable adaptive, real-time inspection sequencing and recovery decision-making for PCBAs. By modelling each board as a graph of interconnected components, the GNN encodes structural and defect-related information, providing a dynamic state representation for the RL agent. The agent then chooses a sequence of inspections or recovery strategies, such as reuse, repair or recycle, balancing the cost of diagnostics against the potential value of recovery. A case study on an industrial I/O device demonstrates the approach's effectiveness with simulations showing that the system learns profitable inspection and recovery policies under uncertainty while reducing unnecessary tests. A comparative analysis of state-of-the-art graph architectures reveals that Graph Attention Networks (GAT) outperform standard Graph Convolutional Networks (GCN). Results confirm the potential of GNN-RL integration to improve economic viability and sustainability in PCBA inspection for e-waste management.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/3009776
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