Publication | Closed Access
Accurate lithography simulation model based on convolutional neural networks
33
Citations
5
References
2017
Year
Electrical EngineeringConvolutional Neural NetworkEngineeringMachine LearningCellular Neural NetworkPhysic Aware Machine LearningSparse Neural NetworkNumerical SimulationConvolutional Neural NetworksComputer EngineeringLithography SimulationNeural Architecture SearchSimulationComputer-aided DesignModeling And SimulationCompact Resist ModelDeep LearningMicroelectronics
Lithography simulation is an essential technique for today's semiconductor manufacturing process. In order to calculate an entire chip in realistic time, compact resist model is commonly used. The model is established for faster calculation. To have accurate compact resist model, it is necessary to fix a complicated non-linear model function. However, it is difficult to decide an appropriate function manually because there are many options. This paper proposes a new compact resist model using CNN (Convolutional Neural Networks) which is one of deep learning techniques. CNN model makes it possible to determine an appropriate model function and achieve accurate simulation. Experimental results show CNN model can reduce CD prediction errors by 70% compared with the conventional model.
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