TY - JOUR AU - Shi, Leyi AB - The implementation of comprehensive security measures is a critical factor in the rapid growth of industrial control networks. Federated Learning has emerged as a viable solution for safeguarding privacy in machine learning. The effectiveness of pattern detection in models is diminished as a result of the difficulty in extracting attack information from extremely large datasets and obtaining an adequate number of examples for specific types of attacks. A robust Federated Learning method, CGFL, is introduced in this study to resolve the challenges presented by data distribution discrepancies and client class imbalance. By employing a data generation strategy to generate balanced datasets for each client, CGFL enhances the global model. It employs a data generator that integrates artificially generated data with the existing data from local clients by employing label correction and data generation techniques. The geometric median aggregation technique was implemented to enhance the security of the aggregation process. The model was simulated and evaluated using the CIC-IDS2017 dataset, NSL-KDD dataset, and CSE-CIC-IDS2018 dataset. The experimental results indicate that CGFL does an effective job of enhancing the accuracy of ICS attack detection in Federated Learning under imbalanced sample conditions. TI - CGFL: A Robust Federated Learning Approach for Intrusion Detection Systems Based on Data Generation JO - Applied Sciences DO - 10.3390/app15052416 DA - 2025-02-24 UR - https://www.deepdyve.com/lp/multidisciplinary-digital-publishing-institute/cgfl-a-robust-federated-learning-approach-for-intrusion-detection-GHeaskfw1a SP - 2416 VL - 15 IS - 5 DP - DeepDyve ER -