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首页> 外文期刊>Sadhana: Academy Proceedings in Engineering Science >Semantic intrusion detection with multisensor data fusion using complex event processing
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Semantic intrusion detection with multisensor data fusion using complex event processing

机译:使用复杂事件处理的多传感器数据融合的语义入侵检测

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Complex Event Processing (CEP) is an emerging technology for processing and identifying patterns of interest from multiple streams of events in realear real time. Sensor network-based security and surveillance is a topic of recent research where events generated from distributed sensors at an unpredictable rate need to be analysed for possible threats and respond in a timely manner. Traditional software architectures like client/server architecture where the interactions are pull-based (DBMS) do not target the efficient processing of streams of events in real time. CEP which is a push-based system can process streaming data to identify the intrusion patterns in near real time and respond to the threats. An Intrusion Detection System (IDS) based on single sensor may fail to give accurate identification of intrusion. Hence there is a need for multisensor based IDS. A multisensor-based IDS enables identification of the intrusion patterns semantically by correlating the events and context information provided by multiple sensors. JDL multisource data fusion model is a well-known research model first established by the Joint Directorate Laboratories. This paper proposes JDL fusion framework-based CEP for semantic intrusion detection. The events generated from heterogeneous sensors are collected, aggregated using logical and spatiotemporal relations to form complex events which model the intrusion patterns. The proposed system is implemented and the results show that the proposed system out performs the pull-based solutions in terms of detection accuracy and detection time.
机译:复杂事件处理(CEP)是一种新兴技术,用于实时/近实时地从多个事件流中处理和识别感兴趣的模式。基于传感器网络的安全性和监视是最近研究的主题,其中需要分析由分布式传感器产生的事件的速率无法预测,以发现可能的威胁并及时做出响应。传统的软件体系结构(如客户端/服务器体系结构)中的交互是基于拉式(DBMS)的,因此其目标不是实时有效地处理事件流。 CEP是一种基于推送的系统,可以处理流数据以近乎实时地识别入侵模式并响应威胁。基于单个传感器的入侵检测系统(IDS)可能无法准确识别入侵。因此,需要基于多传感器的IDS。基于多传感器的IDS通过关联多个传感器提供的事件和上下文信息,能够从语义上识别入侵模式。 JDL多源数据融合模型是由联合首长实验室首先建立的著名研究模型。本文提出了基于JDL融合框架的CEP用于语义入侵检测。收集从异构传感器生成的事件,使用逻辑和时空关系进行汇总,以形成对入侵模式进行建模的复杂事件。所提出的系统得以实现,结果表明所提出的系统在检测准确度和检测时间上均优于基于拉的解决方案。

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