Anomaly Detection in IoT Data

Jason N. Kabi, C. Maina, Edwell T. Mharakurwa
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Abstract

This work describes the performance-evaluation of various unsupervised classical machine learning algorithms in time series outlier detection. The aim is to test the robustness of known classical models that act as baselines in anomaly detection. IoT offers flexibility for various anomalies detection algorithms to be tested since the data collected is voluminous and the types of anomalies found are diverse. By deploying fine-tuned, long-established models, researchers can improve on the quality of the data they release from or use in various studies. This work also provides an insight into how time series data properties such as non-stationarity can affect anomaly detection and how operations such as windowing can be used to mitigate the effects and achieve desirable results. The experiments done show that, with some fine-tuning and data pre-processing, classical outlier detection methods’ performance can be enhanced and utilized in IoT data quality control.
物联网数据中的异常检测
本文描述了各种无监督经典机器学习算法在时间序列离群点检测中的性能评估。目的是测试作为异常检测基线的已知经典模型的鲁棒性。物联网为各种异常检测算法提供了灵活性,因为收集的数据量很大,发现的异常类型也多种多样。通过部署经过微调的、长期建立的模型,研究人员可以提高他们从各种研究中发布或使用的数据的质量。这项工作还提供了对时间序列数据属性(如非平稳性)如何影响异常检测以及如何使用窗口等操作来减轻影响并获得理想结果的见解。实验表明,通过一些微调和数据预处理,可以提高经典离群点检测方法的性能,并将其用于物联网数据质量控制。
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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