Towards a Reference Software Architecture for Human-AI Teaming in Smart Manufacturing

Philipp Haindl, Georg Buchgeher, Maqbool Khan, Bernhard Moser
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引用次数: 5

Abstract

With the proliferation of AI-enabled software systems in smart manufacturing, the role of such systems moves away from a reactive to a proactive role that provides context-specific support to manufacturing operators. In the frame of the EU funded Teaming.AI project, we identified the monitoring of teaming aspects in human-AI collaboration, the runtime monitoring and validation of ethical policies, and the support for experimentation with data and machine learning algorithms as the most relevant challenges for human-AI teaming in smart manufacturing. Based on these challenges, we developed a reference software architecture based on knowledge graphs, tracking and scene analysis, and components for relational machine learning with a particular focus on its scalability. Our approach uses knowledge graphs to capture product and process specific knowledge in the manufacturing process and to utilize it for relational machine learning. This allows for context-specific recommendations for actions in the manufacturing process for the optimization of product quality and the prevention of physical harm. The empirical validation of this software architecture will be conducted in cooperation with three large-scale companies in the automotive, energy systems, and precision machining domain. In this paper we discuss the identified challenges for such a reference software architecture, present its preliminary status, and sketch our further research vision in this project. CCS CONCEPTS• Human-centered computing; • Computing methodologies →Artificial intelligence; • Software andits engineering;
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面向智能制造中人机协作的参考软件体系结构
随着智能制造中支持人工智能的软件系统的普及,这些系统的角色从被动的角色转变为主动的角色,为制造运营商提供特定于环境的支持。在欧盟资助的团队框架内。在人工智能项目中,我们确定了对人类-人工智能协作中的团队方面的监控,道德政策的运行时监控和验证,以及对数据和机器学习算法实验的支持,这些都是智能制造中人类-人工智能团队最相关的挑战。基于这些挑战,我们开发了一个基于知识图、跟踪和场景分析以及关系机器学习组件的参考软件架构,并特别关注其可扩展性。我们的方法使用知识图来捕获制造过程中的产品和工艺特定知识,并将其用于关系机器学习。这允许在生产过程中为优化产品质量和预防物理伤害的行动提供具体的建议。该软件架构的实证验证将与汽车、能源系统和精密加工领域的三家大型公司合作进行。在本文中,我们讨论了这样一个参考软件体系结构所面临的挑战,介绍了它的初步状态,并概述了我们在这个项目中的进一步研究愿景。CCS概念•以人为中心的计算;•计算方法→人工智能;•软件及其工程;
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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