大数据作为工业4.0的推动者:半导体行业的经验教训

David Cemernek, H. Gursch, Roman Kern
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引用次数: 19

摘要

“工业4.0”这个口号被广泛认为是在现代制造业取得成功的方法。本文概述了工业4.0的历史、技术和概念。在制造业中实施工业4.0范式的最大挑战之一是系统景观的异构性和集成来自不同来源的数据,例如不同的供应商和不同的数据格式。自20世纪80年代初以来,这些问题已经在半导体行业得到解决,一些解决方案已经成为完善的标准。因此,半导体行业可以为其他制造领域向工业4.0过渡提供指导方针。在这项工作中,讨论了工业4.0,网络物理系统和大数据过程的方法。基于全面的文献回顾和半导体行业的经验,我们以一家电子制造商的制造过程为例,为工业4.0提供实施建议。
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Big data as a promoter of industry 4.0: Lessons of the semiconductor industry
The catchphrase “Industry 4.0” is widely regarded as a methodology for succeeding in modern manufacturing. This paper provides an overview of the history, technologies and concepts of Industry 4.0. One of the biggest challenges to implementing the Industry 4.0 paradigms in manufacturing are the heterogeneity of system landscapes and integrating data from various sources, such as different suppliers and different data formats. These issues have been addressed in the semiconductor industry since the early 1980s and some solutions have become well-established standards. Hence, the semiconductor industry can provide guidelines for a transition towards Industry 4.0 in other manufacturing domains. In this work, the methodologies of Industry 4.0, cyber-physical systems and Big data processes are discussed. Based on a thorough literature review and experiences from the semiconductor industry, we offer implementation recommendations for Industry 4.0 using the manufacturing process of an electronics manufacturer as an example.
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