Qr code
CN
姚羽

Professor

Supervisor of Doctorate Candidates

Supervisor of Master's Candidates


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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

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Current position: Home >> Scientific Research >> Paper Publications
RL-ACID: Reinforcement Learning-Optimized Adaptive Causal Discovery for Robust Anomaly Detection in Industrial Systems

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Journal:IEEE Transactions on Industrial Informatics

Impact Factor:9.9

Abstract:Anomaly detection is essential for the security of industrial control systems. However, dynamic operating conditions introduce nonstationarity and time-varying causal structures, degrading performance and undermining interpretability. To address this, we propose RL-ACID, a lightweight reinforcement learning framework for adaptive causal discovery. It reformulates anomaly detection as sequential causal discovery, introducing the first unified architecture that integrates lightweight reinforcement learning-based search with causal clustering to resolve the adaptability, efficiency, and interpretability tradeoff. Our framework employs a joint time-frequency encoder to extract and construct candidate causal graphs. Building upon this, we design the causal reinforcement learning-based lightweight search algorithm, which formulates graph exploration as a sequential decision process under sparsity and acyclicity constraints, enabling iterative causal structure optimization. To further enhance adaptability in dynamic environments, we introduce a causal clustering module that softly assigns time-varying graphs to latent operational modes through structural experts, thereby distinguishing normal operational fluctuations from true anomalies. Extensive experiments on multiple industrial benchmarks demonstrate the superior performance of RL-ACID. Our framework not only achieves higher accuracy than baselines but also provides interpretable anomaly analysis through causal path tracing.

Indexed by:SCI JCR Q1

Note:https://ieeexplore.ieee.org/document/11365582

Discipline:Engineering

Document Type:JCR 一区

Translation or Not:no