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Neural Network Classifier-Based OPC With Imbalanced Training Data

机译:基于神经网络分类器的OPC,具有不平衡的培训数据

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摘要

Machine learning-guided optical proximity correction, called ML-OPC in this paper, has recently been proposed to alleviate long runtime of model-based OPC. ML-OPC using regression methods has been presented but with limited prediction accuracy. We propose neural network classifier-based OPC (NNC-OPC), in which a neural network classifier serves as a mask bias model. A few techniques are applied to enhance basic NNC-OPC: parameterization of layout segments using polar Fourier transform signals, dimensionality reduction through weighted principal component analysis, and sampling of training layout segments. Training segments are typically imbalanced over the range of mask biases, which may cause large prediction error for segments that appear less frequently. This is resolved by three techniques: 1) synthetic data generation; 2) class reorganization; and 3) an adaptive learning rate. Experiments with NNC-OPC with all techniques applied indicate that prediction error of mask bias and training time are reduced by 29% and 80%, respectively, compared to state-of-the-art ML-OPC with regression methods.
机译:最近提出了在本文中称为ML-OPC的机器学习引导光学邻近校正,以缓解基于模型的OPC的长期运行时间。使用回归方法的ML-OPC已经呈现,但具有有限的预测精度。我们提出了基于神经网络分类器的OPC(NNC-OPC),其中神经网络分类器用作掩模偏置模型。应用一些技术来增强基本NNC-OPC:使用极傅级变换信号的布局段的参数化,通过加权主成分分析的维度降低,以及训练布局段的采样。训练段通常在掩模偏差范围内不相位,这可能导致频繁出现的段的大预测误差。这是通过三种技术解决的:1)合成数据生成; 2)类重组; 3)自适应学习率。与施加所有技术的NNC-OPC的实验表明,与具有回归方法的最新ML-OPC相比,掩模偏置和训练时间的预测误差分别减少了29%和80%。

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