Prediction of wafer performance: Use of functional outlier detection and regression

In Prep - This page will be udpated upon submission and publication.

Abstract

Optical emission spectroscopy (OES) data is essential for virtual metrology, enabling accurate predictions of wafer performance in plasma etching processes. This approach not only leads to resource savings but also supports better decision-making. To exploit the consecutive nature of OES data, we propose a prediction method based on a functional approach using multivariate functional partial least squares regression, coupled with dimension reduction and a novel outlier detection technique via functional independent component analysis. The proposed approach improves prediction performance by capturing the continuous nature of OES data and effectively extracting the components that describe the data structure. Numerical experiments, including simulation studies and real-world applications of OES data, demonstrate the effectiveness of the proposed method, especially in the presence of outliers.

Contribution

We proposed a novel approach for VM solutions using OES data by adopting a functional perspective.

Code

To be uploaded.