首页> 外文期刊>IEEE Transactions on Semiconductor Manufacturing >The Development of the Complete X-Factor Contribution Measurement for Improving Cycle Time and Cycle Time Variability
【24h】

The Development of the Complete X-Factor Contribution Measurement for Improving Cycle Time and Cycle Time Variability

机译:开发完整的X因子贡献量度以改善周期时间和周期时间变异性

获取原文
获取原文并翻译 | 示例
           

摘要

Reducing variability in a manufacturing process lowers system cycle times. Semiconductor manufacturing is a variable process due in part to product mix, reentry lot flows, batching, and machine breakdowns. This paper examines the issue of identifying machines that introduce variability into the system and constrain the system capacity. We develop a new X-factor contribution measurement, the complete X factor, that considers processing time variability and lot arrival variability among the constraining qualities of the machine groups. This new measure uses machine level data to indicate the normalized system cycle time which has typically been estimated by the ratio of the entire process time and the raw processing time at the end of production. With this measure it becomes possible for factory floor managers to identify a capacity constraining machine and its impact on the overall cycle time directly. We first qualitatively present the justification of the complete X factor for representing the normalized cycle time using queuing theory. Then, the complete X-factor measure was tested on a full-scale simulation model to demonstrate its accuracy for detecting capacity constraining machine groups and for representing normalized cycle time. We also explore the propagation of variability and the effect a highly variable machine group has on product cycle time and cycle time variability in relation to process routing. In a full-scale model machines identified by the complete X-factor contribution measure (CXC) measure lowered cycle time as effectively as highly utilized machines by adding capacity or streamlining breakdowns but had a more prominent effect on lowering cycle time variability. After a brief study on the propagation of variability, the CXC measure identified a lower utilized backend process that reduced cycle time and cycle time variability of the system.
机译:减少制造过程中的可变性可缩短系统周期时间。半导体制造是一个可变的过程,部分原因是产品组合,再入批次流,批次和机器故障。本文研究了识别将可变性引入系统并限制系统容量的机器的问题。我们开发了一种新的X因子贡献度量,即完整的X因子,该度量考虑了机器组的约束质量中的处理时间可变性和批量到达可变性。此新度量使用机器级别的数据来指示规范化的系统周期时间,该时间通常由生产结束时的整个处理时间与原始处理时间之比估算得出。通过这种措施,工厂经理可以直接识别容量限制机器及其对整个周期时间的影响。我们首先用排队论定性地表示完整X因子用于表示标准化循环时间的理由。然后,在完整的模拟模型上测试了完整的X因子度量,以证明其在检测能力受限机器组和表示标准化循环时间方面的准确性。我们还探讨了可变性的传播,以及高度可变的机器组对产品循环时间和与工艺路线相关的循环时间可变性的影响。在完整模型中,通过完整的X因子贡献度量(CXC)识别的机器通过增加容量或简化故障,可以像有效利用机器一样有效地测量降低的循环时间,但对降低循环时间的可变性具有更显着的影响。在对可变性的传播进行了简短的研究之后,CXC措施确定了利用率较低的后端过程,从而减少了系统的循环时间和循环时间可变性。

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