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A Wafer Bin Map “Relaxed” Clustering Algorithm for Improving Semiconductor Production Yield

机译:用于提高半导体生产产量的晶片箱地图“放松”聚类算法

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摘要

The semiconductor manufacturing process involves long and complex activities, with intensive use of resources. Producers compete through the introduction of new technologies for increasing yield and reducing costs. So, yield improvement is becoming increasingly important since advanced production technologies are complex and interrelated. In particular, Wafer Bin Maps (WBMs) presenting specific fault models provide crucial information to keep track of process problems in semiconductor manufacturing. Production control is often based on the “judgement” of expert engineers who, however, carry out the analysis of map templates through simple visual exploration. In this way, existing studies are subjective, time consuming, and are also limited by the capacity of human recognition. This study proposes a network-based data mining approach, which integrates correlation graphs with clustering analysis to quickly extract patterns from WBMs and then bind them to manufacturing defects. An empirical study has been conducted on real production data for validating the proposed clustering algorithm, which showed a perfect correspondence between the malfunction patterns found by the algorithm and those discovered by human experts, so confirming the validity of our approach in its ability of correctly identifying actual defective patterns to help improving production yield.
机译:半导体制造工艺涉及长期和复杂的活动,密集使用资源。生产者通过引入新技术竞争,以增加产量和降低成本。因此,由于先进的生产技术复杂和相互关联,因此产量改善变得越来越重要。特别地,呈现特定故障模型的晶片箱地图(WBMS)提供了重要信息,以跟踪半导体制造中的过程问题。生产控制通常基于专家工程师的“判断”,但是,通过简单的视觉探索对地图模板进行分析。通过这种方式,现有研究是主观的,耗时的,并且也受到人类承认能力的限制。本研究提出了一种基于网络的数据挖掘方法,它与聚类分析集成了相关图,以便快速从WBMS中提取模式,然后将其绑定到制造缺陷。已经对验证所提出的聚类算法进行实证研究,这在算法发现的故障模式与人类专家发现的那些之间存在完美的对应关系,因此在正确识别的能力中确认了我们的方法的有效性实际有缺陷的模式,以帮助提高产量。

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