Cyber-physical threat mitigation in wind energy systems: a novel secure architecture for industry 4.0 power grids

Q2 Energy Energy Informatics Pub Date : 2024-12-20 DOI:10.1186/s42162-024-00449-6
Abdulwahid Al Abdulwahid
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Abstract

In Industry 4.0, integrating Cyber-Physical Systems (CPS) within wind energy infrastructures introduces significant cyber-attack vulnerabilities. This paper presents the Hybrid Adaptive Threat Detection and Response System (HATDRS), a novel security architecture designed to enhance the resilience of wind energy systems against evolving cyber threats. The HATDRS model integrates a hybrid machine learning approach, combining supervised logistic regression with adaptive learning mechanisms, providing real-time threat detection and mitigation. This approach was chosen for its ability to integrate labelled data with real-time unsupervised feedback, providing dynamic and accurate threat detection in wind energy systems. The model was evaluated against traditional Intrusion Detection Systems (IDS) and Machine Learning-based Anomaly Detection Systems (ML-ADS) across key metrics, including accuracy, detection rate, false positive rate, response time, System Security Index (SSI), energy loss, and cost-efficiency. The results demonstrate that the HATDRS model outperforms its counterparts, achieving an accuracy of 95.4% and a detection rate of 97.2% while maintaining the lowest false positive rate (3.1%) and response time (500 ms). Additionally, the model achieved the highest SSI value of 88.7, significantly reducing energy loss to 1.5% and improving cost-efficiency to 0.528. These findings underscore the robustness and efficiency of the HATDRS model in mitigating cyber-physical threats in wind energy systems, offering a scalable and effective solution for securing renewable energy infrastructures. Future work will explore further optimization and real-world testing to validate the system’s scalability across diverse energy environments.

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缓解风能系统中的网络物理威胁:工业 4.0 电网的新型安全架构
在工业4.0时代,将信息物理系统(CPS)集成到风能基础设施中会带来严重的网络攻击漏洞。本文介绍了混合自适应威胁检测和响应系统(HATDRS),这是一种新型安全架构,旨在增强风能系统应对不断变化的网络威胁的弹性。HATDRS模型集成了混合机器学习方法,将监督逻辑回归与自适应学习机制相结合,提供实时威胁检测和缓解。选择这种方法是因为它能够将标记数据与实时无监督反馈相结合,为风能系统提供动态和准确的威胁检测。该模型针对传统入侵检测系统(IDS)和基于机器学习的异常检测系统(ML-ADS)的关键指标进行了评估,包括准确性、检测率、假阳性率、响应时间、系统安全指数(SSI)、能量损失和成本效率。结果表明,该模型的准确率为95.4%,检测率为97.2%,同时保持了最低的假阳性率(3.1%)和响应时间(500 ms)。此外,该模型获得了最高的SSI值88.7,将能量损失显著降低至1.5%,将成本效率提高至0.528。这些发现强调了HATDRS模型在缓解风能系统网络物理威胁方面的稳健性和有效性,为保护可再生能源基础设施提供了可扩展和有效的解决方案。未来的工作将探索进一步的优化和实际测试,以验证系统在不同能源环境中的可扩展性。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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