Edge-Cloud Collaboration Architecture for AI Transformation of SME Manufacturing Enterprises

Jeffrey Ing, Jackie Hsieh, Dennis Hou, Janpu Hou, Tuo Liu, Xiaobin Zhang, Yuxi Wang, Yen-Ting Pan
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引用次数: 1

Abstract

A new edge-cloud collaboration architecture for small and medium sized enterprises (SME) manufacturers is introduced in this work. Lager manufacturers with sufficient resources already invested heavily in smart manufacturing system. There are rapidly emerging needs to help small and medium sized enterprises manufacturers with limited resources to implement smart and highly adaptable manufacturing systems to compete and sustain in global economy. We present an illustrative case study of how to implement and manage AI projects in practice for SME manufacturers. We demonstrated how our proposed architecture can help accelerate one of the United Nations Sustainable Development Goals, i.e. Goal 9: Industry, Innovation and Infrastructure, by exhibiting the practicality and scalability of our proposed solution. In particular, we elaborate on the key manufacturing issues concerning company-wide resource distribution, problem solving and decision making. It will be demonstrated that more advanced AI systems such as deep learning and deep reinforcement learning emerge naturally with one's quality management system which already in place and come with a well-defined semantics of their process functions in the context of collaborative edge-cloud architecture. Furthermore, equipment used in the smart factory includes manufacturing equipment, functional testing equipment and defect detection equipment. In this work, we will present the management and implementation of on-device AI defect detection and classification to show the feasibility and effectiveness of the edge-cloud collaboration architecture approach.
面向中小制造企业AI转型的边缘云协同架构
本文介绍了一种针对中小型企业(SME)制造商的新型边缘云协作架构。拥有足够资源的大型制造商已经在智能制造系统上投入了大量资金。帮助资源有限的中小型企业制造商实施智能和高适应性制造系统以在全球经济中竞争和维持的需求正在迅速出现。我们提出了一个关于如何在实践中为中小企业制造商实施和管理人工智能项目的说明性案例研究。通过展示我们提出的解决方案的实用性和可扩展性,我们展示了我们提出的架构如何帮助加速实现联合国可持续发展目标之一,即目标9:工业、创新和基础设施。特别是,我们详细阐述了有关全公司范围内的资源分配,问题解决和决策的关键制造问题。将展示更先进的人工智能系统,如深度学习和深度强化学习,自然会与已经到位的质量管理系统一起出现,并且在协作边缘云架构的背景下具有良好定义的过程功能语义。此外,智能工厂使用的设备包括制造设备、功能测试设备和缺陷检测设备。在这项工作中,我们将介绍设备上人工智能缺陷检测和分类的管理和实施,以展示边缘云协作架构方法的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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