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A framework for anomaly detection and classification in Multiple IoT scenarios

机译:多种IOT方案中的异常检测和分类的框架

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The investigation of anomalies is an important element in many scientific research fields. In recent years, this activity has been also extended to social networking and social internetworking, where different networks interact with each other. In these research fields, we have recently witnessed an important evolution because, beside networks of people, networks of things are becoming increasingly common. IoT and Multiple IoT scenarios are thus more and more studied. This paper represents a first attempt to investigate anomalies in a Multiple IoT scenario (MIoT). First, we propose a new methodological framework that can make future investigations in this research field easier, coherent, and uniform. Then, in the context of anomaly detection in an MIoT, we define the so-called "forward problem" and "inverse problem". The definition of these problems allows the investigation of how anomalies depend on inter-node distances, the size of IoT networks, and the degree centrality and closeness centrality of anomalous nodes. The approach proposed herein is applied to a smart city scenario, which is a typical MIoT. Here, data coming from sensors and social networks can boost smart lighting in order to provide citizens with a smart and safe environment.
机译:异常的调查是许多科学研究领域的重要因素。近年来,这项活动也被扩展到社交网络和社会互联网络,不同的网络彼此相互作用。在这些研究领域,我们最近目睹了一个重要的演变,因为除了人的网络之外,事情的网络越来越普遍。因此,越来越多地研究了物联网和多个IOT场景。本文代表了在多个IOT场景中调查异常(MIET)的首次尝试。首先,我们提出了一种新的方法论框架,可以更轻松,连贯和均匀地在本研究领域进行未来调查。然后,在发生异常检测的背景下,我们定义所谓的“前进问题”和“逆问题”。这些问题的定义允许调查异常程度如何取决于节点间距离,IOT网络的大小以及异常节点的程度中心和密闭中心。本文提出的方法适用于智能城市场景,这是一个典型的敏捷。在这里,来自传感器和社交网络的数据可以提高智能照明,以便为公民提供智能和安全的环境。

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