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A Scalable and Energy-Efficient Anomaly Detection Scheme in Wireless SDN-Based mMTC Networks for IoT

机译:无线SDN的基于无线SDN的MMTC网络中的可扩展和节能异常检测方案

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As a typical Internet-of-Things (IoT) scenario, massive machine-type communications (mMTC) services are expected to grow exponentially and create a multibillion-dollar industry spanning a broad range of vertical sectors. In literature, wireless software-defined network (SDN) is viewed as a promising approach to facilitate the degree of reconfigurability on extended sets of mMTC devices via centralized software updates. However, most of the current anomaly detection scheme (ADS) in SDN suffers from the high risk of overwhelming of the controller as well as excessive energy consumption if directly applied in the network with enormous devices. To address the scalability issues in centralized ADS, we propose a localized ADS scheme, called scalable and energy-efficient anomaly detection scheme (SEE-ADS), comprising of a detection activation module, a lightweight predetection module, a heavyweight anomaly detection module, and a dynamic strategy selection module. Through the cooperation among these modules, the proposed ADS is capable of detecting attacks dynamically and effectively without the risk of energy depletion via discontinuous activation of the heavyweight detection. The lower complexity is fulfilled by developing a localized and adaptive heavyweight detection module, called a localized evolving semisupervised learning-based anomaly detection scheme (LESLA). Besides, the proposed scheme makes full use of feedback from the previous heavyweight activation and the indication of predetection on each packet. The simulation results show that the proposed scheme greatly reduces the overall energy consumption over heavyweight detection. Furthermore, the proposed scheme shows higher sensitivity on abnormal packets and similar false alarm compared with the literature work.
机译:作为典型的互联网(IOT)场景,预计大量机器型通信(MMTC)服务预计将呈指数级增长,并创建跨越广泛的垂直部门的多亿美元行业。在文献中,无线软件定义的网络(SDN)被视为有希望的方法,以便通过集中的软件更新促进在扩展的MMTC设备上的重新配置性程度。然而,如果直接用巨大的设备在网络中应用,SDN中的大多数异常的异常检测方案(ADS)都遭受了控制器压倒性的高风险以及过度的能量消耗。为了解决集中广告中的可扩展性问题,我们提出了一个局部的广告方案,称为可扩展和节能异常检测方案(见广告),包括检测激活模块,轻量级预先替代模块,重量级异常检测模块和动态策略选择模块。通过这些模块之间的合作,所提出的广告能够通过不连续检测的不连续激活,在没有能量消耗的情况下动态有效地检测攻击。通过开发局部和自适应的重量级检测模块来满足较低的复杂性,称为局部不断发展的基于半培育的基于学习的异常检测方案(Lesla)。此外,所提出的方案充分利用了先前重量级激活的反馈和每个数据包的预先预备的指示。仿真结果表明,该方案大大降低了重量级检测的整体能耗。此外,与文献工作相比,所提出的方案对异常分组的灵敏度较高,以及类似的误报。

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