A Simplified Reaction-diffusion System of Chemically-Amplified Resist Process Modeling for OPC

被引:3
|
作者
Fan, Yongfa [1 ]
Jeong, Moon-Gyu [2 ]
Ser, Junghoon [2 ]
Lee, Sung-Woo [2 ]
Suh, Chunsuk [2 ]
Koo, Kyo-Il [3 ]
Lee, Sooryong [3 ]
Su, Irene [4 ]
Zavyalova, Lena [5 ]
Falch, Brad [5 ]
Huang, Jason [1 ]
Schmoeller, Thomas [6 ]
机构
[1] Synopsys Inc, 700 E Middlefield Rd, Mountain View, CA 94043 USA
[2] Samsung Elect, Hwasung 445701, South Korea
[3] Synopsys Inc, Seoul 135984, South Korea
[4] Synopsys Inc, Hsinchu 302, Taiwan
[5] Synopsys Inc, Austin, TX 78746 USA
[6] Synopsys Inc, D-85609 Aschheim, Germany
来源
OPTICAL MICROLITHOGRAPHY XXIII | 2010年 / 7640卷
关键词
OPC; modeling; Chemically Amplified Resist; OPTICAL LITHOGRAPHY; SIMULATION; IMPACT;
D O I
10.1117/12.846737
中图分类号
TB3 [工程材料学];
学科分类号
0805 ; 080502 ;
摘要
As semiconductor manufacturing moves to 32nm and 22nm technology nodes with 193nm water immersion lithography, the demand for more accurate OPC modeling is unprecedented to accommodate the diminishing process margin. Among all the challenges, modeling the process of Chemically Amplified Resist (CAR) is a difficult and critical one to overcome. The difficulty lies in the fact that it is an extremely complex physical and chemical process. Although there are well-studied CAR process models, those are usually developed for TCAD rigorous lithography simulators, making them unsuitable for OPC simulation tasks in view of their full-chip capability at an acceptable turn-around time. In our recent endeavors, a simplified reaction-diffusion model capable of full-chip simulation was investigated for simulating the Post-Exposure-Bake (PEB) step in a CAR process. This model uses aerial image intensity and background base concentration as inputs along with a small number of parameters to account for the diffusion and quenching of acid and base in the resist film. It is appropriate for OPC models with regards to speed, accuracy and experimental tuning. Based on wafer measurement data, the parameters can be regressed to optimize model prediction accuracy. This method has been tested to model numerous CAR processes with wafer measurement data sets. Model residual of 1nm RMS and superior resist edge contour predictions have been observed. Analysis has shown that the so-obtained resist models are separable from the effects of optical system, i.e., the calibrated resist model with one illumination condition can be carried to a process with different illumination conditions. It is shown that the simplified CAR system has great potential of being applicable to full-chip OPC simulation.
引用
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页数:11
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