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Data mining for improving a cleaning process in the semiconductor industry

机译:数据挖掘用于改进半导体行业的清洁过程

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摘要

As device geometry continues to shrink, micro-contaminants have an increasingly negative impact on yield. By diminishing the contamination problem, semiconductor manufacturers will significantly improve the wafer yield. This paper presents a comprehensive and successful application of data mining methodologies to the refinement of a new dry cleaning technology that utilizes a laser beam for the removal of micro-contaminants. Experiments with three classification-based data mining methods (decision tree induction, neural networks, and composite classifiers) have been conducted. The composite classifier architecture has been shown to yield higher accuracy than the accuracy of each individual classifier on its own. The paper suggests that data mining methodologies may be particularly useful when data is scarce, and the various physical and chemical parameters that affect the process exhibit highly complex interactions. Another implication is that on-line monitoring of the cleaning process using data mining may be highly effective.
机译:随着器件几何形状的不断缩小,微污染物对产量的负面影响越来越大。通过减少污染问题,半导体制造商将显著提高晶圆良率。本文介绍了数据挖掘方法在改进一种新的干洗技术方面的全面和成功的应用,该技术利用激光束去除微污染物。已经进行了三种基于分类的数据挖掘方法(决策树归纳、神经网络和复合分类器)的实验。复合分类器架构已被证明比每个单独的分类器本身的准确率更高。该论文认为,当数据稀缺时,数据挖掘方法可能特别有用,并且影响该过程的各种物理和化学参数表现出高度复杂的相互作用。另一个含义是,使用数据挖掘对清洁过程进行在线监控可能非常有效。

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