基于合成模式生成的多任务深度学习增强光刻热点检测

Xinguang Zhang;Shiyang Chen;Zhouhang Shao;Yongjie Niu;Li Fan
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引用次数: 0

摘要

在先进集成电路(IC)设计中,光刻热点检测是保证可制造性和良率的关键。虽然机器学习方法已经显示出了希望,但它们经常在检测从未见过的热点(TNSB)和减少难以分类(HTC)模式的误报方面遇到困难。本文提出了一种新的多任务深度学习框架,用于光刻热点检测,以解决这些挑战。我们的主要贡献包括:(1)基于早期设计空间探索(EDSE)的综合模式生成方法,以增强训练数据并改进TNSB热点检测;(2)联合进行热点分类和定位的多任务卷积神经网络架构;(3)平衡热点检测精度和虚警减少的自适应损失函数。在ICCAD-2019基准数据集上的实验结果表明,我们的方法在热点检测中达到98.5%的准确率,只有1.2%的误报率,显著优于目前最先进的方法。此外,与以前的技术相比,我们在TNSB热点检测方面提高了22%,在HTC模式上减少了5倍的误报。该框架为集成电路设计早期的光刻热点检测提供了强大的解决方案,实现了更有效的可制造性优化设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Lithographic Hotspot Detection via Multi-Task Deep Learning With Synthetic Pattern Generation
Lithographic hotspot detection is crucial for ensuring manufacturability and yield in advanced integrated circuit (IC) designs. While machine learning approaches have shown promise, they often struggle with detecting truly-never-seen-before (TNSB) hotspots and reducing false alarms on hard-to-classify (HTC) patterns. This article presents a novel multi-task deep learning framework for lithographic hotspot detection that addresses these challenges. Our key contributions include: (1) A synthetic pattern generation method based on early design space exploration (EDSE) to augment training data and improve TNSB hotspot detection; (2) A multi-task convolutional neural network architecture that jointly performs hotspot classification and localization; and (3) An adaptive loss function that balances hotspot detection accuracy and false alarm reduction. Experimental results on the ICCAD-2019 benchmark dataset demonstrate that our approach achieves 98.5% accuracy in hotspot detection with only 1.2% false alarm rate, significantly outperforming state-of-the-art methods. Furthermore, we show a 22% improvement in TNSB hotspot detection and a 5X reduction in false alarms on HTC patterns compared to previous techniques. The proposed framework provides a robust solution for lithographic hotspot detection in early stages of IC design, enabling more efficient design-for-manufacturability optimization.
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CiteScore
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