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People productivity improvement via cloud machine monitor

机译:人们通过云机器显示器提高生产力

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To maintain high stability and production yield of production equipment in a semiconductor fab, on-line quality monitoring of wafers is required. In current practice, physical metrology is performed only on monitor wafers that are periodically added in production equipment for processing with production wafers. In addition to control wafers usage and loss of tool availability, however, routine monitoring does result in a huge cost of manual operation loading. This is equivalent to about 15% loss of people productivity. To give consideration to quality control and people productivity improvement, the system of Cloud Monitor (CM) is proposed based on stepwise regression and principle component analysis (PCA). The CM is verified by test-runs on the chemical vapor deposition (CVD) and chemical mechanical polishing (CMP) processes. Eight monitor items are considered. The CM is effective to construct forecast models with 1.34% mean absolute prediction errors (MAPE) and 100% OOC catch rate (OCR). The experimental results indicate that the CM is capable of predicting quality of production wafers using real-time sensor data from production equipment. Its performance abnormality or drift can be detected timely as well as improving people productivity.
机译:为了保持较高的稳定性和生产设备的生产产量在半导体晶圆厂,需要在线质量监测晶片。在当前实践中,物理计量,只对在生产设备定期加入用于与生产的晶片处理监控晶片进行。除了控制晶片使用和工具可用性的损失,但是,常规监测是否为手操作的负载的巨大的成本结果。这相当于人的生产力的约15%的损失。为了兼顾质量控制和人员生产力的提高,云监控系统(CM)是基于逐步回归和主成分分析(PCA)提出。的CM是由试运行在化学气相沉积(CVD)和化学机械抛光(CMP)工艺验证。八个监视项目的考虑。该CM是有效构建预测模型与1.34%,平均绝对预测误差(MAPE)和100%OOC的拦截率(OCR)。实验结果表明,该CM能够预测的使用来自生产设备的实时传感器数据,制造晶片的质量。它的性能异常或漂移可以及时进行检测,以及改善人民的生产力。

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