Qr code
CN
姚羽

Professor

Supervisor of Doctorate Candidates

Supervisor of Master's Candidates


E-Mail:

Administrative Position:复杂网络系统安全保障技术教育部工程研究中心主任

Education Level:With Certificate of Graduation for Doctorate Study

Gender:Male

Contact Information:yaoyu@mail.neu.edu.cn

Degree:博士

Alma Mater:东北大学

Discipline:Computer Applications Technology
Computer Software and Theory
Computer Architecture

Academic Honor:

2013   Excellent talents of the Ministry of education in the new century

Click:Times

The Last Update Time: ..

Current position: Home >> Scientific Research >> Paper Publications
CFL-IDS: An Effective Clustered Federated Learning Framework for Industrial Internet of Things Intrusion Detection

Hits:

Journal:IEEE Internet of Things Journal.

Impact Factor:10.6

Abstract:The Industrial Internet of Things (IIoT) offers the manufacturing sector opportunities for transformation and upgrade but also carries significant security risks. Traditional federated learning (FL) as a potential security solution is challenging in complicated application environments with heterogeneous data, imbalanced data, and poisoning attacks. To address these challenges, we construct a clustered FL Framework for IIoT intrusion detection (CFL-IDS) based on local models’ evaluation metrics (EMs). First, we designed an intrusion detection model with a dynamic focal loss (DFL) for all edge nodes (ENs). This model’s performance is enhanced under various imbalanced data partitions by dynamically altering the focus on samples during the loss minimization training process. Second, the time series of EMs of local models to reflect the data distribution of ENs implicitly, and use clustering algorithms to facilitate knowledge sharing among those ENs with similar data distribution to co-optimize a common model for them. Finally, an intelligent cooperative model aggregation mechanism (ICMAM) adaptively adjusts each local model’s weight distribution, which substantially improves the benefits of FL and alleviate subpar models’ alleviates interference from subpar models to FL. Experiments demonstrate that CFL-IDS has stronger robustness and displays superior performance under data imbalance and non-independent and identically distributed (non-IID) situations while being effective against poisoning attacks.

Key Words:IIoT Intrusion detection, clustered federated learning, evaluation metrics, non-IID, data imbalanced, poisoning attack

Indexed by:SCI JCR Q1

Note:https://ieeexplore.ieee.org/document/10285326

Document Type:JCR 一区

Translation or Not:no