Federated Learning for Automotive Aftermarket Supply Chains: A Privacy-Preserving Framework for Predictive Maintenance Optimization

Bhuram, Shiva Kumar (2025) Federated Learning for Automotive Aftermarket Supply Chains: A Privacy-Preserving Framework for Predictive Maintenance Optimization. Global Journal of Engineering and Technology Advances, 23 (3). pp. 216-223. ISSN 2582-5003

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Abstract

Global automotive aftermarket networks face critical challenges in predicting part failures while maintaining data privacy across decentralized suppliers and distributors. This article presents a novel federated learning framework that enables collaborative predictive maintenance without raw data sharing. The article combines edge-based LSTM networks for local failure prediction using IoT sensor data with a cloud-based meta-model aggregating knowledge via secure multi-party computation. Privacy preservation is achieved through differential privacy applied to gradient updates and homomorphic encryption for sensitive feature aggregation. Domain-specific optimizations include attention mechanisms for handling intermittent failure patterns and transfer learning across part categories. Validated across a network of Tier-1 suppliers and distribution centers, the framework achieves significant prediction accuracy improvements over isolated models, reduces unnecessary part replacements, and maintains full compliance with regulatory standards while optimizing inventory management across participants.

Item Type: Article
Official URL: https://doi.org/10.30574/gjeta.2025.23.3.0200
Uncontrolled Keywords: Federated learning; Predictive maintenance; Automotive aftermarket; Privacy-preserving machine learning; Supply chain optimization
Depositing User: Editor Engineering Section
Date Deposited: 22 Aug 2025 09:14
Related URLs:
URI: https://eprint.scholarsrepository.com/id/eprint/5677