This paper proposes a predictive maintenance framework based on Federated Learning to address the challenges of data privacy and efficiency in Industry 4.0 manufacturing. The framework employs a combined network called a one-dimensional convolutional neural network (1DCNN) and a bidirectional long short-term memory (BiLSTM) network (1DCNN-BiLSTM) model for predictions, enabling cross-client collaborative training without sharing raw data. Using the Microsoft Azure Predictive Maintenance dataset, our experimental results demonstrate that Federated Learning can achieve 81% prediction accuracy, representing a 27% improvement over individual models. The federated model maintains at least 71% prediction performance even with 50% reduced training data or 25% client participation while showing excellent generalization ability on unseen data. These results validate the framework's effectiveness in balancing data privacy, efficiency, and model performance in real-world applications.
Published in: 15th Annual International Conference on Industrial Engineering and Operations Management, Singapore, Singapore
Publisher: IEOM Society International
Date of Conference: February 18
-20
, 2025
ISBN: 979-8-3507-4444-6
ISSN/E-ISSN: 2169-8767