...
首页> 外文期刊>Processes >Big Data Analytics for Smart Manufacturing: Case Studies in Semiconductor Manufacturing
【24h】

Big Data Analytics for Smart Manufacturing: Case Studies in Semiconductor Manufacturing

机译:智能制造的大数据分析:半导体制造案例研究

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Smart manufacturing (SM) is a term generally applied to the improvement in manufacturing operations through integration of systems, linking of physical and cyber capabilities, and taking advantage of information including leveraging the big data evolution. SM adoption has been occurring unevenly across industries, thus there is an opportunity to look to other industries to determine solution and roadmap paths for industries such as biochemistry or biology. The big data evolution affords an opportunity for managing significantly larger amounts of information and acting on it with analytics for improved diagnostics and prognostics. The analytics approaches can be defined in terms of dimensions to understand their requirements and capabilities, and to determine technology gaps. The semiconductor manufacturing industry has been taking advantage of the big data and analytics evolution by improving existing capabilities such as fault detection, and supporting new capabilities such as predictive maintenance. For most of these capabilities: (1) data quality is the most important big data factor in delivering high quality solutions; and (2) incorporating subject matter expertise in analytics is often required for realizing effective on-line manufacturing solutions. In the future, an improved big data environment incorporating smart manufacturing concepts such as digital twin will further enable analytics; however, it is anticipated that the need for incorporating subject matter expertise in solution design will remain.
机译:智能制造(SM)是一个通常用于通过系统集成,物理和网络功能的链接以及利用包括利用大数据演进在内的信息优势来改善制造操作的术语。 SM在各个行业中的采用情况不平衡,因此有机会寻找其他行业来确定生物化学或生物学等行业的解决方案和路线图。大数据演变为管理大量信息并通过分析对信息采取行动提供了机会,从而改善了诊断和预测能力。可以根据维度定义分析方法,以了解其需求和功能,并确定技术差距。半导体制造行业一直在通过改进现有功能(如故障检测)和支持新功能(如预测性维护)来利用大数据和分析的发展。对于其中的大多数功能:(1)数据质量是交付高质量解决方案时最重要的大数据因素; (2)实现有效的在线制造解决方案通常需要将主题专业知识整合到分析中。未来,结合了智能制造概念(如数字孪生)的改进的大数据环境将进一步支持分析。但是,预计仍然需要在解决方案设计中纳入主题专业知识。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号