利用机器学习技术在物联网传感器数据中进行异常检测,以实现智能电网的预测性维护

Edwin Omol, Lucy Mburu, Dorcas Onyango
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引用次数: 1

摘要

物联网(IoT)设备在智能电网基础设施中的普及产生了大量传感器数据。这些丰富的数据为在智能电网中采用复杂的数据分析技术进行预测性维护提供了机会。使用机器学习算法进行异常检测已成为一种很有前途的方法,可用于识别传感器数据中的不规则模式和偏差,从而制定积极主动的维护策略。本文探讨了机器学习技术在物联网传感器数据异常检测中的应用,以实现智能电网的预测性维护。我们深入研究了各种机器学习算法,包括隔离森林(Isolation Forest)、单类 SVM、自动编码器(Autoencoders)和随机森林(Random Forest),评估了它们在大规模数据流中识别异常的能力。本研究还回顾了物联网传感器数据异常检测的性能评估和模型选择技术、可能的集成和部署挑战,以及对所选少数研究的评论。本学术研究明确质疑了智能电网背景下预测性维护的深远意义。此外,文章还阐述了各类机器学习算法,并阐明了选择这些算法所采用的标准。值得注意的是,该研究探讨了在部署和集成专门用于物联网传感器数据异常检测的机器学习技术过程中可能出现的潜在障碍。此外,研究还揭示了现有文献中可能无意中忽略的方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Detection In IoT Sensor Data Using Machine Learning Techniques For Predictive Maintenance In Smart Grids
The proliferation of Internet of Things (IoT) devices in the smart grid infrastructure has enabled the generation of massive amounts of sensor data. This wealth of data presents an opportunity to implement sophisticated data analytics techniques for predictive maintenance in smart grids. Anomaly detection using machine learning algorithms has emerged as a promising approach to identifying irregular patterns and deviations in sensor data, leading to proactive maintenance strategies. This article explores theapplication of machine learning techniques for anomaly detection in IoT sensor data to enable predictive maintenance in smart grids. We delve into various machine learning algorithms, including Isolation Forest, One-Class SVM, Autoencoders, and Random Forest, assessing their capabilities in identifying anomalies in large-scale data streams. The study also reviews the Performance Evaluation and Model Selection techniques for Anomaly Detection in IoT Sensor Data, possible integration and deployment challenges, and critique of the few selected studies. Explicitly, this scholarly inquiry questions the profound significance of predictive maintenance within the context of Smart Grids. It elucidates distinct categories of anomalies inherent within IoT Sensor Data.Furthermore, the article expounds upon various classes of Machine Learning Algorithms while also clarifying the criteria employed for their selection. Notably, the study probes the potential hindrances that could emerge during the deployment and integration of Machine Learning Techniques specifically aimed at Anomaly Detection in IoT Sensor Data. In addition, the research sheds light on the aspects that might have been inadvertently overlooked within the existing corpus of literature.
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