1. NeurFill: Migrating Full-Chip CMP Simulators to Neural Networks for Model-Based Dummy Filling Synthesis
- Author
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Changhao Yan, Xuan Zeng, Junzhe Cai, Bei Yu, Yuzhe Ma, and Dian Zhou
- Subjects
Very-large-scale integration ,Speedup ,Artificial neural network ,Computer science ,Electronic design automation ,Quadratic programming ,Solver ,Chip ,Backpropagation ,Computational science - Abstract
Dummy filling is widely applied to significantly improve the planarity of topographic patterns for the chemical mechanical polishing (CMP) process in VLSI manufacturing. This paper proposes a novel model-based dummy filling synthesis framework NeurFill, integrated with multiple starting points-sequential quadratic programming (MSP-SQP) optimization solver. Inside this framework, a full-chip CMP simulator is first migrated to the neural network, achieving $8134 \times$ speedup on gradient calculation by backward propagation. Multi-modal starting points search is further applied in the framework to obtain satisfying filling quality optimums. The experimental results show that the proposed NeurFill outperforms existing rule- and model-based methods.
- Published
- 2021
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