基于插值和差分优化的机器学习模型在小样本数据集上精确预测硅蚀刻深度

Ye Yang, Yang Xu
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引用次数: 0

摘要

提出了一种新的插值差分优化(IDO)机器学习模型来预测硅蚀刻深度,该模型特别适合于解决小样本问题。我们的方法包括将从技术计算机辅助设计(TCAD)软件获得的实验和模拟数据分为训练集和测试集。机器学习模块1 (ML1)将实验数据和TCAD仿真数据作为输入,ML2将实际实验数据作为输入,学习实验数据与TCAD仿真数据的差异,输出差异。ML1和ML2产生的输出作为机器学习模块3 (ML3)的输入参数,ML3通过自身的学习过程更新权值,生成最终的预测结果。我们证明了包含三种基本ML算法的IDO模型与单独的基本ML算法相比具有更高的预测精度。此外,通过消融研究,我们建立了IDO预测模型的三个组成部分是不可分割的。IDO模型具有更好的泛化性能,特别适用于半导体加工领域的小样本数据集。
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Interpolation and difference optimized machine learning model for accurate prediction of silicon etching depth with small sample dataset
A novel interpolation and difference optimized (IDO) machine learning model to predict the depth of silicon etching is proposed, which is particularly well-suited to addressing small sample problems. Our approach involves dividing both experimental and simulation data obtained from the Technology Computer-Aided Design (TCAD) software into training and testing sets. Both experimental data and TCAD simulation data are used as inputs to machine learning module 1 (ML1), while ML2 takes the actual experimental data as inputs and then learns the difference between the experimental data and the TCAD simulation data, outputting the difference. The outputs generated by ML1 and ML2 serve as input parameters to machine learning module 3 (ML3), and the weights of ML3 are updated through its own learning process to produce the final prediction results. We demonstrate that our IDO model, which contains three basic ML algorithms, achieves higher prediction accuracy compared to the basic ML algorithm alone. Moreover, through ablation studies, we establish that the three components of the IDO prediction model are inseparable. The IDO model exhibits improved generalization performance, making it particularly suitable for small sample datasets in the semiconductor processing domain.
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