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Detecting Interference in Wireless Sensor Network Received Samples: A Machine Learning Approach

机译:检测无线传感器网络接收到的样本中的干扰:一种机器学习方法

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Wireless Sensor Network (WSN) technology has developed substantially over the past decade or so and now numerous solutions exist across a diverse range of innovative applications. The expanding Internet of Things (IoT) sector is becoming an ever more important aspect of modern technology and a key motivator for improving security and privacy in WSNs. Typically, WSN protocols form an integral part of the overall IoT infrastructure by enabling the sensor to access point communication links. These wireless links inherently encompass security challenges, frequently due to external interference and intrusions. As IoT applications incorporate WSNs in their architecture, the incentive to attack and compromise these WSNs escalates. Often, commercial off the shelf devices and standardized open-access protocols combine to achieve specific WSN deployments. Numerous WSN vulnerabilities exist, whilst attack approaches are abundant and change frequently. Thus, to ensure acceptable performance, safety and privacy in many IoT applications, the adopted WSN must be secure. This paper discusses IoT security and privacy, by evaluating a machine learning approach for interference detection focused entirely on analyzing received In-phase (I) and Quadrature-phase (Q) samples. Significantly, once an intrusion is detected, mitigation strategies can be implemented, thus emphasizing the requirement for interference detection. Random Forest is chosen as the machine learning classifier as it consists of a large number of individual decision trees operating as an ensemble. An intrusion detection system (IDS) is developed based on Matlab simulated ZigBee data as an initial insight into whether a real wireless data approach may be viable.
机译:无线传感器网络(WSN)技术在过去十年左右的时间里得到了长足的发展,现在在众多创新应用中都存在众多解决方案。不断扩大的物联网(IoT)部门正在成为现代技术越来越重要的方面,并且是提高WSN安全性和隐私性的主要动力。通常,WSN协议通过使传感器能够访问接入点通信链路,从而构成了整个物联网基础设施的组成部分。这些无线链路固有地包含安全挑战,通常是由于外部干扰和入侵造成的。随着物联网应用程序将WSN纳入其体系结构,攻击和破坏这些WSN的动机不断升级。通常,商用的现成设备和标准化的开放访问协议结合在一起可以实现特定的WSN部署。存在许多WSN漏洞,而攻击方法则很丰富且经常更改。因此,为了确保在许多物联网应用中可接受的性能,安全性和隐私性,所采用的WSN必须是安全的。本文通过评估一种完全用于分析接收到的同相(I)和正交(Q)样本的干扰检测机器学习方法,来讨论IoT安全性和隐私性。重要的是,一旦检测到入侵,便可以实施缓解策略,从而强调了对干扰检测的要求。选择“随机森林”作为机器学习分类器,因为它由大量独立的决策树组成。基于Matlab模拟的ZigBee数据开发了入侵检测系统(IDS),初步了解了真正的无线数据方法是否可行。

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