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Online Anomaly Detection of Industrial loT Based on Hybrid Machine Learning Architecture

机译:基于混合机器学习架构的工业物联网在线异常检测

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摘要

Industrial IoT (IIoT) in Industry 4.0 integrates everything at the level of information technology with the level of technology of operation and aims to improve Business to Business (B2B) services (from production to public services). It includes Machine to Machine (M2M) interaction either for process control (e.g., factory processes, fleet tracking) or as part of self-organizing cyberphysical distributed control systems without human intervention. A critical factor in completing the abovementioned actions is the development of intelligent software systems in the context of automatic control of the business environment, with the ability to analyze in real-time the existing equipment through the available interfaces (hardware-in-the-loop). In this spirit, this paper presents an advanced intelligent approach to real-time monitoring of the operation of industrial equipment. A hybrid novel methodology that combines memory neural networks is used, and Bayesian methods that examine a variety of characteristic quantities of vibration signals that are exported in the field of time, with the aim of real-time detection of abnormalities in active IIoT equipment are also used.
机译:工业 4.0 中的工业物联网 (IIoT) 将信息技术层面的一切与运营技术层面相结合,旨在改善企业对企业 (B2B) 服务(从生产到公共服务)。它包括机器对机器 (M2M) 交互,用于过程控制(例如,工厂流程、车队跟踪)或作为自组织信息物理分布式控制系统的一部分,无需人工干预。完成上述行动的一个关键因素是在业务环境自动控制的背景下开发智能软件系统,并能够通过可用的接口(硬件在环)实时分析现有设备。本着这种精神,本文提出了一种先进的智能方法来实时监控工业设备的运行。使用结合记忆神经网络的混合新方法,并使用贝叶斯方法检查在时间场中导出的各种特征量的振动信号,目的是实时检测有源IIoT设备的异常情况。

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