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An Effective Federated Learning Approach for Secure and Private Scalable Intrusion Detection on the Internet of Vehicles
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W. M. Alwash Et Al. , "An Effective Federated Learning Approach for Secure and Private Scalable Intrusion Detection on the Internet of Vehicles," Concurrency and Computation: Practice and Experience , vol.37, no.15-17, 2025

Alwash, W. M. Et Al. 2025. An Effective Federated Learning Approach for Secure and Private Scalable Intrusion Detection on the Internet of Vehicles. Concurrency and Computation: Practice and Experience , vol.37, no.15-17 .

Alwash, W. M., Kara, M., AYDIN, M. A., & BALIK, H. H., (2025). An Effective Federated Learning Approach for Secure and Private Scalable Intrusion Detection on the Internet of Vehicles. Concurrency and Computation: Practice and Experience , vol.37, no.15-17.

Alwash, Wisam Et Al. "An Effective Federated Learning Approach for Secure and Private Scalable Intrusion Detection on the Internet of Vehicles," Concurrency and Computation: Practice and Experience , vol.37, no.15-17, 2025

Alwash, Wisam M. Et Al. "An Effective Federated Learning Approach for Secure and Private Scalable Intrusion Detection on the Internet of Vehicles." Concurrency and Computation: Practice and Experience , vol.37, no.15-17, 2025

Alwash, W. M. Et Al. (2025) . "An Effective Federated Learning Approach for Secure and Private Scalable Intrusion Detection on the Internet of Vehicles." Concurrency and Computation: Practice and Experience , vol.37, no.15-17.

@article{article, author={Wisam Makki Alwash Et Al. }, title={An Effective Federated Learning Approach for Secure and Private Scalable Intrusion Detection on the Internet of Vehicles}, journal={Concurrency and Computation: Practice and Experience}, year=2025}