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A nifty collaborative intrusion detection and prevention architecture for Smart Grid ecosystems

机译:用于智能电网生态系统的漂亮的协作式入侵检测和防御架构

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摘要

Smart Grid (SG) systems are critical, intelligent infrastructure utility services connected through open networks that are potentially susceptible to cyber-attacks with very acute security risks of shutdown, loss of life, and loss of revenue. Traditional intrusion detection systems based on signature and anomaly techniques are no longer sufficient to protect SGs due to their new connectivity and management challenges, the ever-rapidly-evolving masquerades, and cyber criminality levied against them. SGs require cyber-security systems to render them resilient and protected through advanced Intrusion Detection and Prevention System (IDPS) techniques and mechanisms. This paper proposes a smart collaborative advanced IDPS to provide the best possible protection of SGs with a fully distributed management structure that supports the network and host based detections and the prevention of attacks. By facilitating a reliable, scalable, and flexible design, the specific requirements of IDPS for SGs can be more easily met via a fuzzy risk analyzer, an independent and ontology knowledge-based inference engine module. These can work collaboratively by managing functions across multiple IDPS domains. A set of extensive and intensive simulated experiments shows that with its smart advanced components incorporating soft computing machine-learning techniques and a rich ontology knowledge base with fuzzy logic analysis, it detects and prevents intrusions more efficiently. The multi-faceted results of the simulation also show that the proposed Collaborative Smart IDPS (CSIDPS) system increases the intrusion detection accuracy and decreases the false positive alarms when compared to traditional IDPSs. This is epitomized by the skillful use of the confusion matrix technique for organizing classifiers, visualizing their performance, and assessing their overall behavior. In the final analysis, the CSIDPS architecture is designed toward contributing to de facto norms for SG ecosystems.
机译:智能电网(SG)系统是通过开放网络连接的关键,智能基础设施实用服务,这些服务可能会受到网络攻击的威胁,并具有非常严重的安全风险,如关机,人员伤亡和收入损失。传统的基于签名和异常技术的入侵检测系统由于其新的连接性和管理挑战,不断冒充的伪装以及对它们征收的网络犯罪而不再足以保护SG。 SG要求网络安全系统通过高级入侵检测和防御系统(IDPS)技术和机制使其具有弹性并受到保护。本文提出了一种智能协作高级IDPS,以完全分布式的管理结构为SG提供最佳保护,该结构支持基于网络和主机的检测以及攻击的预防。通过促进可靠,可扩展和灵活的设计,可以通过模糊风险分析器,独立的,基于本体知识的推理引擎模块轻松满足SG的IDPS的特定要求。这些可以通过管理多个IDPS域中的功能来协同工作。一组广泛且密集的模拟实验表明,凭借其结合了软计算机器学习技术的智能高级组件以及具有模糊逻辑分析的丰富的本体知识库,它可以更有效地检测和阻止入侵。仿真的多方面结果还表明,与传统IDPS相比,拟议的协作智能IDPS(CSIDPS)系统提高了入侵检测的准确性,并减少了误报警报。熟练使用混淆矩阵技术来组织分类器,可视化其性能并评估其总体行为就体现了这一点。归根结底,CSIDPS体系结构旨在为SG生态系统的实际规范做出贡献。

著录项

  • 来源
    《Computers & Security》 |2017年第1期|92-109|共18页
  • 作者单位

    Computer Networks and Security Laboratory (LARCES), State University of Ceara (UECE), Fortaleza, Brazil,Faculty of Science, Engineering and Computing, Kingston University, Kingston, United Kingdom;

    Universiti Teknologi Petronas, 32610 Bandar Seri Iskandar, Perak Darul Ridzuan, Malaysia;

    Department of Electronic Systems, Aalborg University, Aalborg, Denmark;

    National Higher School for Computer Science and System Analysis (ENSIAS), Mohammed Ⅴ University in Rabat, National Higher School for Computer Science and System Analysis (ENSIAS), BP-713, Agdal Rabat, Rabat, Morocco;

    Computer Networks and Security Laboratory (LARCES), State University of Ceara (UECE), Fortaleza, Brazil;

    Center for Cyber and Information Security, Norwegian University of Science and Technology, Gjovik N-2802, Norway;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Smart Grid (SG); Intrusion Detection and Prevention; System (IDPS); Intelligent Collaborative Autonomic; Management; Risk assessment management; Soft computing; SCADA;

    机译:智能电网(SG);入侵检测与预防;系统(IDPS);智能协作自主管理;风险评估管理;软计算;SCADA;
  • 入库时间 2022-08-18 02:10:39

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