Anomalies Detection in Fog Computing Architectures Using Deep Learning

Dr. Subarna Shakya, Dr. Smys S.
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引用次数: 31

Abstract

A novel platform of dispersed streaming is developed by the fog paradigm for the applications associated with the internet of things. The sensed information’s of the IOT plat form is collected from the edge device closer to the user from the lower plane and moved to the fog in the middle of the cloud and edge and then further pushed to the cloud at the top most plane. The information’s gathered at the lower plane often holds unanticipated values that are of no use in the application. These unanticipated or the unexpected data’s are termed as anomalies. These unexpected data’s could emerge either due to the improper edge device functioning which is usually the mobile devices, sensors or the actuators or the coincidences or purposeful attacks or due to environmental changes. The anomalies are supposed to be removed to retain the efficiency of the network and the application. The deep learning frame work developed in the paper involves the hardware techniques to detect the anomalies in the fog paradigm. The experimental analysis showed that the deep learning models are highly grander compared to the rest of the basic detection structures on the terms of the accuracy in detecting, false-alarm and elasticity.
利用深度学习检测雾计算架构中的异常情况
针对与物联网相关的应用,利用雾范式开发了一种新型的分散流媒体平台。物联网板块形式的感知信息从更靠近用户的边缘设备收集,从低层平面移动到云和边缘中间的雾中,然后进一步推送到最上层平面的云中。在下层收集到的信息往往含有一些在应用中毫无用处的意外值。这些意外数据被称为异常数据。出现这些意外数据的原因可能是边缘设备(通常是移动设备、传感器或执行器)运行不当,也可能是巧合、有目的的攻击或环境变化。要保持网络和应用的效率,就必须消除异常数据。本文开发的深度学习框架涉及硬件技术,用于检测雾范例中的异常情况。实验分析表明,与其他基本检测结构相比,深度学习模型在检测准确性、误报率和弹性方面都非常出色。
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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