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Detecting Sensor Faults, Anomalies and Outliers in the Internet of Things: A Survey on the Challenges and Solutions

机译:在物联网中检测传感器故障,异常和异常值:挑战和解决方案的调查

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摘要

The Internet of Things (IoT) has gained significant recognition to become a novel sensing paradigm to interact with the physical world in this Industry 4.0 era. The IoTs are being used in many diverse applications that are part of our life and is growing to become the global digital nervous systems. It is quite evident that in the near future, hundreds of millions of individuals and businesses with billions will have smart-sensors and advanced communication technology, and these things will expand the boundaries of current systems. This will result in a potential change in the way we work, learn, innovate, live and entertain. The heterogeneous smart sensors within the Internet of Things are indispensable parts, which capture the raw data from the physical world by being the first port of contact. Often the sensors within the IoT are deployed or installed in harsh environments. This inevitably means that the sensors are prone to failure, malfunction, rapid attrition, malicious attacks, theft and tampering. All of these conditions cause the sensors within the IoT to produce unusual and erroneous readings, often known as outliers. Much of the current research has been done in developing the sensor outlier and fault detection models exclusively for the Wireless Sensor Networks (WSN), and adequate research has not been done so far in the context of the IoT. Wireless sensor network’s operational framework differ greatly when compared to IoT’s operational framework, using some of the existing models developed for WSN cannot be used on IoT’s for detecting outliers and faults. Sensor faults and outlier detection is very crucial in the IoT to detect the high probability of erroneous reading or data corruption, thereby ensuring the quality of the data collected by sensors. The data collected by sensors are initially pre-processed to be transformed into information and when Artificially Intelligent (AI), Machine Learning (ML) models are further used by the IoT, the information is further processed into applications and processes. Any faulty, erroneous, corrupted sensor readings corrupt the trained models, which thereby produces abnormal processes or outliers that are significantly distinct from the normal behavioural processes of a system. In this paper, we present a comprehensive review of the detecting sensor faults, anomalies, outliers in the Internet of Things and the challenges. A comprehensive guideline to select an adequate outlier detection model for the sensors in the IoT context for various applications is discussed.
机译:事物互联网(物联网)已获得重大认可,以成为一个新颖的传感范例,与该行业的物理世界互动4.0时代。 IOTS正在许多不同的应用程序中使用,这些应用程序是我们生命的一部分,并且正在成长为成为全球数字神经系统。很明显,在不久的将来,数亿个具有数十亿美元的企业将具有智能传感器和先进的通信技术,这些事情将扩大当前系统的界限。这将导致我们工作,学习,创新,生活和娱乐方式的潜在变化。 Internet Internet Internet内的异构智能传感器是不可或缺的部分,通过作为第一港口捕获物理世界的原始数据。通常,IOT内的传感器经常部署或安装在恶劣环境中。这不可避免地意味着传感器容易出现故障,故障,磨损,恶意攻击,盗窃和篡改。所有这些条件都会导致物联网内的传感器产生不寻常和错误的读数,通常称为异常值。在为无线传感器网络(WSN)开发传感器异常和故障检测模型方面已经完成了大部分研究,并且在IOT的背景下尚未完成足够的研究。与IOT的运行框架相比,无线传感器网络的操作框架很大程度不同,使用为WSN开发的一些现有型号不能用于检测异常值和故障。传感器故障和异常值检测在IOT中非常重要,以检测错误读数或数据损坏的高概率,从而确保由传感器收集的数据的质量。最初预处理由传感器收集的数据被转换为信息,并且当人工智能(AI)时,IOT进一步使用机器学习(ML)模型,该信息进一步处理到应用程序和过程中。任何错误,错误,损坏的传感器读数都损坏了训练有素的型号,从而产生了与系统的正常行为过程显着不同的异常过程或异常值。在本文中,我们对检测传感器故障,异常,异常值的互联网上的异常值以及挑战进行了全面的审查。讨论了综合指南,为各种应用程序选择IOT上下文中的传感器的足够异常检测模型。

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