Proceedings of the KIEE Conference (대한전기학회:학술대회논문집)
- 2006.04a
- /
- Pages.99-101
- /
- 2006
Auto/Cross-Correlated Time Series Modeling of Plasma Equipment Sensor Information
플라즈마 장비 센서정보의 Auto/Cross-Correlated 시계열 모델링
Abstract
Auto-Cross Correlated time series (ACTS) model was constructed by using the backpropagation neural network. The performance of ACTS model was evaluated with sensor information collected from a large volume, industrial plasma-enhanced chemical vapor deposition system. A total of 18 sensor information were collected. The effect of inclusion of past and future information were examined. For all but three sensor information with a large data variance demonstrated a prediction error less than 3%. By integrating ACTS model into equipment software, process quality can be more stringently monitored while improving device throughput.