The semiconductor industry is one of the most technology-evolving and capital-intensive market sectors. Effective inspection and metrology are necessary to improve product yield, increase product quality and reduce costs. In recent years, many semiconductor manufacturing equipments are equipped with sensors to facilitate real-time monitoring of the production process. These production-state and equipment-state sensor data provide an opportunity to practice machine-learning technologies in various domains, such as anomaly/fault detection, maintenance scheduling, quality prediction, etc. In this work, we focus on the task of soft sensing regression, which uses sensor data to predict impending inspection measurements that used to be measured in wafer inspection and metrology systems. We proposed an LSTM-based regressor and designed two loss functions for model training. Although engineers may look at our prediction errors in a subjective manner, a new piece-wise evaluation metric was proposed for assessing model accuracy in a mathematical way. The experimental results demonstrated that the proposed model can achieve accurate and early prediction of various types of inspections in complicated manufacturing processes.
翻译:半导体工业是技术发展最快和资本密集的市场部门之一。有效的检查和计量是提高产品产量、提高产品质量和降低成本所必需的。近年来,许多半导体制造设备配备了传感器,以便利实时监测生产过程。这些生产状态和设备状态传感器数据为在不同领域,如异常/失灵探测、维护时间安排、质量预测等领域应用机器学习技术提供了机会。在这项工作中,我们侧重于软感应回归任务,该任务利用传感器数据预测在瓦费尔检查和计量系统中用来测量的即将进行的检查测量。我们提出了基于LSTM的递减器,并为示范培训设计了两个损失功能。虽然工程师们可以主观地看待我们的预测错误,但提出了一个新的片式评价标准,以数学方式评估模型的准确性。实验结果表明,拟议的模型能够准确和及早预测复杂制造过程的各种视察。