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面向孤岛型网络化微电网频率恢复的数据驱动式网络韧性框架

A Data-Driven Cyber-Resilience Framework With Minimal Feature Learning for Frequency Restoration in Isolated Networked Microgrids

作者 Subrata K. Sarker · Hamidreza Shafei · Li Li · M. J. Hossain · S M Muyeen
期刊 IEEE Transactions on Industry Applications
出版日期 2025年10月
卷/期 第 62 卷 第 2 期
技术分类 智能化与AI应用
技术标签 微电网 机器学习 模型预测控制MPC 调峰调频
相关度评分 ★★★★ 4.0 / 5.0
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中文摘要

本文提出一种基于稀疏贝叶斯学习与序贯蒙特卡洛的数据驱动框架,用于孤岛型网络化微电网(INMG)上层控制层的网络攻击协同检测与缓解,实现快速频率恢复与经济运行。在MATLAB/OPAL-RT中验证了其对多通道攻击的强鲁棒性与实时性。

English Abstract

Isolated networked microgrids (INMGs) provide a sustainable solution for future energy demands by leveraging modern communication technologies to facilitate efficient coordination among isolated microgrids (IMGs). However, reliance on communication networks brings cyber vulnerabilities, potentially undermining the overall performance and reliability of INMGs. Existing cyber-resilience solutions for IMGs are often inflexible, computationally expensive, and lack the adaptability needed for cyber-attack detection and mitigation. These challenges make them unsuitable for INMGs, where the interconnected IMG system complicates the detection of attacks. This paper introduces a scalable, data-driven intelligent framework designed for the concurrent detection and mitigation of attacks targeting the upper control layers of the INMG. The framework employs sparse Bayesian learning via the sequential Monte Carlo method to estimate the posterior distribution weights of the dynamic neural network model. This approach enhances sparsity by prioritizing key weights and filtering out insignificant ones, resulting in faster error estimation. This error identifies attacks, compromised IMGs, and communication channels, triggering timely attack mitigation for frequency restoration and cost-efficient operation of the INMG. Compared to existing strategies, the proposed approach offers significant improvements in computational efficiency and effectively manages the complexity of simultaneous attacks on multiple communication channels, distinguishing between malicious interference and normal system fluctuations, and enabling faster real-time mitigation. The proposed framework is validated using an INMG frequency-control model simulated in MATLAB and OPAL-RT under various attack scenarios. Results demonstrate its effectiveness in managing cyber-attacks and enhancing the adaptive frequency resilience of the INMG.
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SunView 深度解读

该框架高度契合阳光电源PowerTitan、PowerStack等储能系统在微电网场景下的构网型(GFM)与智能协同控制需求,可增强ST系列PCS在通信受扰时的频率自主恢复能力。建议将该轻量化AI检测模块嵌入iSolarCloud平台边缘侧,提升光储柴氢多源混合微电网的网络韧性;尤其适用于海外离网项目及高网络安全要求的工商业微网,强化阳光电源‘光储一体化+智能运维’解决方案竞争力。