Intelligent Monitoring of IoT Devices using Neural Networks

Ashima Chawla, P. Babu, Trushnesh Gawande, Erik Aumayr, P. Jacob, Sheila Fallon
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引用次数: 5

Abstract

The Internet of Things (IoT) has seen expeditious growth in recent times with 7 billion connected devices in 2020, thus leading to the vital importance of real-time monitoring of IoT devices. Through this paper, we demonstrate the idea of building a cloud-native application to monitor smart home devices. The application intends to provide valuable performance metrics from the perspective of end-users and react to anomalies in real-time. In this demo paper, we conduct the demonstration using Autoencoder (an unsupervised technique) based Deep Neural Networks (DNNs) to learn the normal operating conditions of power consumption of smart devices. When an anomaly is detected, the DNNs take proactive action and send appropriate commands back to the device. In addition, the users are provided with a real-time graphical representation of power consumption. This will help to save electricity on a domestic as well as industrial level. Finally, we discuss the future prospects of monitoring IoT devices.
利用神经网络对物联网设备进行智能监控
物联网(IoT)近年来迅速增长,到2020年将有70亿台连接设备,因此对物联网设备进行实时监控至关重要。通过本文,我们展示了构建一个云原生应用程序来监控智能家居设备的想法。该应用程序旨在从最终用户的角度提供有价值的性能指标,并实时响应异常。在这篇演示论文中,我们使用基于自动编码器(一种无监督技术)的深度神经网络(dnn)进行演示,以学习智能设备功耗的正常运行条件。当检测到异常时,dnn会主动采取行动,并向设备发送相应的命令。此外,还为用户提供了功耗的实时图形表示。这将有助于在家庭和工业层面上节约电力。最后,我们讨论了物联网设备监控的未来前景。
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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