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Fog-Enabled Architecture for Data-Driven Cyber-Manufacturing Systems

机译:用于数据驱动的网络制造系统的支持迷机架构

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Over the past few decades, both small- and medium-sized manufacturers as well as large original equipment manufacturers (OEMs) have been faced with an increasing need for low cost and scalable intelligent manufacturing machines. Capabilities are needed for collecting and processing large volumes of real-time data generated from manufacturing machines and processes as well as for diagnosing the root cause of identified defects, predicting their progression, and forecasting maintenance actions proactively to minimize unexpected machine down times. Although cloud computing enables ubiquitous and instant remote access to scalable information and communication technology (ICT) infrastructures and high volume data storage, it has limitations in latency-sensitive applications such as high performance computing and real-time stream analytics. The emergence of fog computing, Internet of Things (IoT), and cyber-physical systems (CPS) represent radical changes in the way sensing systems, along with ICT infrastructures, collect and analyze large volumes of real-time data streams in geographically distributed environments. Ultimately, such technological approaches enable machines to function as an agent that is capable of intelligent behaviors such as automatic fault and failure detection, self-diagnosis, and preventative maintenance scheduling. The objective of this research is to introduce a fog-enabled architecture that consists of smart sensor networks, communication protocols, parallel machine learning software, and private and public clouds. The fog-enabled architecture will have the potential to enable large-scale, geographically distributed online machine and process monitoring, diagnosis, and prognosis that require low latency and high bandwidth in the context of data-driven cyber-manufacturing systems.
机译:在过去的几十年中,小型和中型制造商以及大型原始设备制造商(OEM)都面临着越来越需要低成本和可扩展的智能制造机器。收集和处理从制造机器和流程产生的大量实时数据所需的功能以及诊断所识别的缺陷的根本原因,预测其进展,并主动预测维护动作,以最小化意外的机器停机时间。虽然云计算使得能够泛滥和即时访问可扩展信息和通信技术(ICT)基础架构和大容量数据存储,但它在延迟敏感的应用中具有局限性,例如高性能计算和实时流分析。雾计算,事物互联网(物联网)和网络物理系统(CPS)的出现代表了传感系统的激进变化,以及ICT基础设施,收集和分析地理分布式环境中的大量实时数据流。最终,这种技术方法使机器能够用作能够智能行为的代理,例如自动故障和故障检测,自诊断和预防性维护调度。本研究的目的是引入支持的迷机架构,包括智能传感器网络,通信协议,并行机器学习软件和私有和公共云。启用迷雾的架构将有可能在数据驱动的网络制造系统的背景下实现大规模,地理分布的在线机器和过程监测,诊断和预后,这些内容需要低延迟和高带宽。

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