Foundations of information governance for smart manufacturing.

IF 0.8 Q4 ENGINEERING, MANUFACTURING Smart and Sustainable Manufacturing Systems Pub Date : 2020-06-11 DOI:10.1520/ssms20190041
K. C. Morris, Yan Lu, S. Frechette
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引用次数: 4

Abstract

The manufacturing systems of the future will be even more dependent on data than they are today. More and more data and information are being collected and communicated throughout product development lifecycles and across manufacturing value chains. To enable smarter manufacturing operations, new equipment often includes built-in data collection capabilities. Older equipment can be retrofitted inexpensively with sensors to collect a wide variety of data. Many manufacturers are in a quandary as to what to do with increasing quantities of data. Much hype currently surrounds the use of AI to process large data sets, but manufacturers struggle to understand how AI can be applied to improve manufacturing system performance. The gap lies in the lack of good information governance practices for manufacturing. This paper defines information governance in the manufacturing context as the set of principles that allow for consistent, repeatable, and trustworthy processing and use of data. The paper identifies three foundations for good information governance that are needed in the manufacturing environment-data quality, semantic context, and system context-and reviews the surrounding and evolving body of work. The work includes a broad base of standard methods that combines to create reusable information from raw data formats. An example from an additive manufacturing case study is used to show how those detailed specifications create the governance needed to build trust in the systems.
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智能制造信息化治理基础。
未来的制造系统将比现在更加依赖于数据。在整个产品开发生命周期和整个制造价值链中,越来越多的数据和信息被收集和交流。为了实现更智能的制造操作,新设备通常包括内置的数据收集功能。旧的设备可以用低廉的价格装上传感器来收集各种各样的数据。对于如何处理不断增加的数据量,许多制造商都处于两难境地。目前围绕使用人工智能来处理大型数据集的炒作很多,但制造商很难理解如何应用人工智能来提高制造系统的性能。差距在于制造业缺乏良好的信息治理实践。本文将制造环境中的信息治理定义为一组原则,这些原则允许对数据进行一致、可重复和可信的处理和使用。本文确定了制造环境中所需的良好信息治理的三个基础——数据质量、语义上下文和系统上下文,并回顾了周围和不断发展的工作主体。这项工作包括广泛的标准方法基础,这些方法结合起来从原始数据格式创建可重用的信息。一个来自增材制造案例研究的例子被用来展示这些详细的规范如何创建在系统中建立信任所需的治理。
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来源期刊
Smart and Sustainable Manufacturing Systems
Smart and Sustainable Manufacturing Systems ENGINEERING, MANUFACTURING-
CiteScore
2.50
自引率
0.00%
发文量
17
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