Anomaly Detection Models for Detecting Sensor Faults and Outliers in the IoT - A Survey

A. Gaddam, Tim Wilkin, M. Angelova
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引用次数: 17

Abstract

Over the past few years, the Internet of Things (IoT) has gained significant recognition to become a novel sensing paradigm to interact with the physical world. The sensors within the Internet of Things are indispensable parts and are the first port to capture the raw data. As the sensors within IoT are usually deployed in environments which are harsh, which inevitably make the sensors venerable to failure and malfunction. Beside sensor faults and malfunctions, the inherent environment where the sensors are usually installed could also make the sensor to fail prematurely. These conditions will make the sensors within the IoT to generate unusual and erroneous data, often known as outliers. Outliers detection is very crucial in IoT to detect the high probability of erroneous reading or data corruption, thereby ensuring the quality of the data collected by sensors. Data anomalies, abnormal data or outliers are considered to be the sensor data streams that are significantly distinct from the normal behavioural data. In this paper, we present a comprehensive survey that can be used as a guideline to select which outlier model is adequate for the application in the IoT context.
物联网中传感器故障和异常点检测的异常检测模型——综述
在过去的几年中,物联网(IoT)已经获得了重要的认可,成为一种与物理世界交互的新型感知范式。物联网中的传感器是不可或缺的部分,也是捕获原始数据的第一个端口。由于物联网中的传感器通常部署在恶劣的环境中,这不可避免地会使传感器出现故障和故障。除了传感器故障和故障外,传感器通常安装的固有环境也可能使传感器过早失效。这些条件将使物联网内的传感器产生不寻常和错误的数据,通常被称为异常值。异常值检测在物联网中非常重要,可以检测错误读取或数据损坏的高概率,从而确保传感器收集的数据质量。数据异常、异常数据或异常值被认为是与正常行为数据显著不同的传感器数据流。在本文中,我们提出了一个全面的调查,可以作为一个指导方针,以选择哪些离群模型适合物联网环境中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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