【24h】

Remeasurement Dispatching Rule for Semiconductor EDS Process

机译:半导体EDS过程的重新探测调度规则

获取原文

摘要

Recently, the Fourth Industrial Revolution has rapidly accelerated with the development of IT technology. Demand for state-of-the-art semiconductors sharply increased due to these market changes, and improvement of production capacity is particularly important to gain a competitive advantage. The semiconductor manufacturing process can be divided into three stages such as fabrication, probe (EDS), packaging. Electrical die sort (EDS) process is an important testing process in quality control between fabrication and assembly processes and is the point where the manufacturing capacity and supply chain can be affected. For these reasons, the demand for optimal operation is continuously increasing. However, schedule changes occur due to unexpected abnormal situations, such as machine failures or repairs owing to the nature of the testing process, that require retests to accurately analyze defects in products, or problems in the testing process. Therefore, scheduling considering uncertainty is especially important for smooth production. This study investigated the problem of schedule changes that arise due to retests among abnormal situations in the EDS process of non-memory semiconductors and presents a genetic algorithm with penalty method (GAPM) for scheduling under such uncertainties. The EDS process has the characteristics of a flexible manufacturing system (FMS), and it can be scheduled using the solution to the flexible job-shop scheduling problem (FJSP). Since the FJSP is an NP-hard class problem among combinatorial problems, a meta-heuristic method that can find the optimal solution in a short time is used. GAPM uses a genetic algorithm as the exhaustive search algorithm that is widely used as FJSP solutions and uses neighborhood search techniques for local search. In addition, the penalty method was used to make effective scheduling possible even under uncertainties such as retests that occur during the manufacturing process.
机译:最近,第四个工业革命随着IT技术的发展迅速加速。由于这些市场变化,对最先进的半导体的需求急剧增加,并且生产能力的提高尤为重要,无法获得竞争优势。半导体制造工艺可分为三个阶段,例如制造,探针(EDS),包装。电气模序(EDS)工艺是制造和装配过程之间质量控制的重要测试过程,并且是制造能力和供应链可能受到影响的点。由于这些原因,对最佳操作的需求不断增加。但是,由于意外的异常情况发生,例如由于测试过程的性质,例如机器故障或维修,因此需要重新分析产品中的缺陷,或者在测试过程中的问题中进行预测发生或维修。因此,考虑不确定性的调度对于平滑生产尤为重要。本研究研究了由于在非记忆半导体的EDS过程中的异常情况下重新测试的时间表变化问题,并提出了一种具有惩罚方法(GAPM)的遗传算法,以便在这种不确定性下调度。 EDS过程具有灵活的制造系统(FMS)的特性,可以使用对柔性作业商店调度问题(FJSP)的解决方案来安排。由于FJSP是组合问题中的NP硬阶层问题,因此使用了可以在短时间内找到最佳解决方案的元启发式方法。 GAPM使用遗传算法作为穷举搜索算法,广泛用作FJSP解决方案,并使用邻域搜索技术进行本地搜索。此外,即使在制造过程中发生的重新测试之类的不确定性,罚化方法也用于使能有效调度。

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