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LiReD: A Light-Weight Real-Time Fault Detection System for Edge Computing Using LSTM Recurrent Neural Networks

机译:Lirectire:使用LSTM经常性神经网络的边缘计算的轻量级实时故障检测系统

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摘要

Monitoring the status of the facilities and detecting any faults are considered an important technology in a smart factory. Although the faults of machine can be analyzed in real time using collected data, it requires a large amount of computing resources to handle the massive data. A cloud server can be used to analyze the collected data, but it is more efficient to adopt the edge computing concept that employs edge devices located close to the facilities. Edge devices can improve data processing and analysis speed and reduce network costs. In this paper, an edge device capable of collecting, processing, storing and analyzing data is constructed by using a single-board computer and a sensor. And, a fault detection model for machine is developed based on the long short-term memory (LSTM) recurrent neural networks. The proposed system called LiReD was implemented for an industrial robot manipulator and the LSTM-based fault detection model showed the best performance among six fault detection models.
机译:监控设施的状态并检测任何故障被认为是智能工厂中的重要技术。尽管可以使用收集的数据实时分析机器故障,但是需要大量的计算资源来处理大量数据。云服务器可用于分析收集的数据,但采用采用靠近设施的边缘设备的边缘计算概念更有效。边缘设备可以提高数据处理和分析速度并降低网络成本。在本文中,通过使用单板计算机和传感器构建能够收集,处理,存储和分析数据的边缘设备。并且,基于长短期存储器(LSTM)复发性神经网络开发了机器故障检测模型。拟议的系统被称为lefire为工业机器人操纵器实施,基于LSTM的故障检测模型显示了六个故障检测模型中的最佳性能。

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