Smart connected worker edge platform for smart manufacturing: Part 1—Architecture and platform design

Yoon G. Kim, Richard P. Donovan, Yutian Ren, Shijie Bian, Tongzi Wu, Shweta Purawat, Anthony J. Manzo, Ilkay Altintas, Bingbing Li, Guann-Pyng Li
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Abstract

The challenge of sustainably producing goods and services for healthy living on a healthy planet requires simultaneous consideration of economic, societal, and environmental dimensions in manufacturing. Enabling technology for data driven manufacturing paradigms like Smart Manufacturing (a.k.a. Industry 4.0) serve as the technological backbone from which sustainable approaches to manufacturing can be implemented. Unfortunately, these technologies are typically associated with broader and deeper factory automation that is often too expensive and complex for the small and medium sized manufacturers (SMMs) that comprise the majority of manufacturing business in the USA and for whom their most valuable asset are the people whose jobs automation while replace. This paper describes an edge intelligent platform to integrate internet-of-things technologies with computing hardware, software, computational workflows for machine learning, and data ingestion, enabling SMMs to transition into smart manufacturing paradigms by leveraging the intelligence of their people. The platform leverages consumer grade electronics and sensors (affordable and portable), customized software with open source software packages (accessible), and existing communication network infrastructures (scalable). The software systems are implemented via Kubernetes orchestration of Docker containerization to ensure scalability and programmability. The platform is adaptive via computational workflow engines that produce information from data by processing with low-cost edge computing devices while efficiently accessing resources of cloud servers as needed. The proposed edge platform connects workers to technological resources that provide computational intelligence (i.e., silicon-based sensing and computation for data collection and contextualization) to enable decision making at the edge of advanced manufacturing.

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面向智能制造的智能互联工人边缘平台:第1部分:架构和平台设计
为了在一个健康的地球上实现健康生活,可持续地生产商品和服务,这一挑战要求在制造业中同时考虑经济、社会和环境方面的因素。智能制造(又称工业4.0)等数据驱动制造范式的使能技术是实施可持续制造方法的技术支柱。不幸的是,这些技术通常与更广泛和更深层次的工厂自动化相关联,对于中小型制造商(smm)来说,这通常过于昂贵和复杂,而中小型制造商(smm)构成了美国制造业的大部分,对他们来说,他们最有价值的资产是自动化正在取代的工作人员。本文描述了一个边缘智能平台,将物联网技术与计算硬件、软件、用于机器学习的计算工作流程和数据摄取集成在一起,使中小企业能够通过利用员工的智慧过渡到智能制造范式。该平台利用了消费级电子产品和传感器(可负担且便携)、带有开源软件包的定制软件(可访问)以及现有的通信网络基础设施(可扩展)。软件系统通过Docker容器化的Kubernetes编排实现,以确保可扩展性和可编程性。该平台通过计算工作流引擎进行自适应,该引擎通过低成本边缘计算设备处理数据产生信息,同时根据需要有效访问云服务器的资源。提议的边缘平台将工人连接到提供计算智能的技术资源(即用于数据收集和情境化的基于硅的传感和计算),以实现先进制造边缘的决策。
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