LGMar 13, 2023

Quantile Online Learning for Semiconductor Failure Analysis

arXiv:2303.07062v12 citationsh-index: 26
Originality Incremental advance
AI Analysis

This work addresses the problem of real-time defect detection for semiconductor manufacturers, offering an incremental improvement over offline methods.

The paper tackles the challenge of detecting defects in semiconductor manufacturing with an online learning approach, achieving an overall accuracy of 86.66% and a 15.50% improvement over existing methods on a specific dataset.

With high device integration density and evolving sophisticated device structures in semiconductor chips, detecting defects becomes elusive and complex. Conventionally, machine learning (ML)-guided failure analysis is performed with offline batch mode training. However, the occurrence of new types of failures or changes in the data distribution demands retraining the model. During the manufacturing process, detecting defects in a single-pass online fashion is more challenging and favoured. This paper focuses on novel quantile online learning for semiconductor failure analysis. The proposed method is applied to semiconductor device-level defects: FinFET bridge defect, GAA-FET bridge defect, GAA-FET dislocation defect, and a public database: SECOM. From the obtained results, we observed that the proposed method is able to perform better than the existing methods. Our proposed method achieved an overall accuracy of 86.66% and compared with the second-best existing method it improves 15.50% on the GAA-FET dislocation defect dataset.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes