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Design and Performance Analysis of Docker-Based Smart Manufacturing Platform Based on Deep Learning Model

机译:基于深度学习模型的基于Docker的智能制造平台设计与性能分析

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Breakdown of equipment causes very large damage to the factory. Research is continuously being conducted to prevent break down of equipment by detecting abnormal signs before equipment failure. This paper proposes an anomaly detection for system architecture based on a docker container. A docker is a virtualized container with many performance and scalability advantages. We have used the deep learning model of Autoencoder to effectively anomaly detection and its performance has been proven through experiments.
机译:设备故障会给工厂造成很大的损失。通过在设备故障之前检测异常迹象来不断进行研究以防止设备故障。本文提出了一种基于docker容器的系统架构异常检测方法。泊坞窗是具有许多性能和可伸缩性优势的虚拟化容器。我们已使用自动编码器的深度学习模型有效地进行异常检测,并且其性能已通过实验证明。

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