基于神经网络的等离子体腐蚀故障实时识别研究

B. Zhang, G. May
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引用次数: 8

摘要

随着集成电路产业进一步向亚/spl μ m制造技术发展,优化制造设备利用率至关重要。及时准确的设备故障识别是成功的关键。在实际发生故障之前很好地预测故障也是可取的。在本文中,我们使用神经网络对从三步等离子体蚀刻过程中提取的时间序列数据进行建模,以定义CMOS ASIC中的有源区域。这些数据包括在六个月内从Drytek等离子蚀刻机收集的14万片硅片的三步蚀刻过程的实时测量数据。该数据中存在两种类型的异常:(1)恒定或缓慢前进的时间(表明机器故障的存在);(2)缺失步骤(表示在蚀刻过程中发生了意想不到的事情)。进行数据预处理以消除原始数据中的数据采集错误,并将总时间序列分离为三个子序列(每个蚀刻步骤一个)。模式识别技术用于确定每个记录的处理步骤数。分类结果和预测误差表明,根据腔室状态可以准确地确定蚀刻步数。然后为每一步构建动态神经网络模型。我们最初专注于模拟与腔室压力相关的时间序列。将压力数据的时间序列建模为其先前值和当前时间的函数。我们使用这种方法构建蚀刻系统压力变化的时间序列模型,只使用初始条件和时间值作为输入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards real time fault identification in plasma etching using neural networks
As the IC industry moves further into sub-/spl mu/m fabrication technology, optimal fabrication equipment utilization is essential. Timely and accurate equipment malfunction identification can be key to success. It is also desirable to predict malfunctions well in advance of actual occurrence. In this paper, we use neural nets to model time series data extracted from a three-step plasma etch process for defining active areas in a CMOS ASIC. The data consists of real-time measurements from the three-step etch process for 140,000 silicon wafers collected over a six-month period from a Drytek plasma etcher. Two types of anomalies were present in this data: (1) constant or slowly advancing time (indicating the presence of a machine fault); and (2) missing steps (indicating something unexpected happened during the etch). Data preprocessing is carried out to eliminate any data acquisition errors in the original data and to separate the total time sequence into three sub-sequences (one per etch step). A pattern recognition technique is used to determine the process step number for each record. The classification results and the prediction error demonstrate accurate determination of the etch step number from the chamber state. Dynamic neural net models are then constructed for each step. We initially focus on modeling the time series associated with chamber pressure. The time series of pressure data is modeled as a function of its previous values and the current time. We use this approach to construct time series models of the etching system pressure variations using only the initial condition and the time value as inputs.
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