From IC Layout to Die Photo: A CNN-Based Data-Driven Approach

02/11/2020
by   Hao-Chiang Shao, et al.
6

Since IC fabrication is costly and time-consuming, it is highly desirable to develop virtual metrology tools that can predict the properties of a wafer based on fabrication configurations without performing physical measurements on a fabricated IC. We propose a deep learning-based data-driven framework consisting of two convolutional neural networks: i) LithoNet that predicts the shape deformations on a circuit due to IC fabrication, and ii) OPCNet that suggests IC layout corrections to compensate for such shape deformations. By learning the shape correspondence between pairs of layout design patterns and their SEM images of the product wafer thereof, given an IC layout pattern, LithoNet can mimic the fabrication procedure to predict its fabricated circuit shape for virtual metrology. Furthermore, LithoNet can take the wafer fabrication parameters as a latent vector to model the parametric product variations that can be inspected on SEM images. In addition, traditional lithography simulation methods used to suggest a correction on a lithographic photomask is computationally expensive. Our proposed OPCNet mimics the optical proximity correction (OPC) procedure and efficiently generates a corrected photomask by collaborating with LithoNet to examine if the shape of a fabricated IC circuitry best matches its original layout design. As a result, the proposed LithoNet-OPCNet framework cannot only predict the shape of a fabricated IC from its layout pattern, but also suggests a layout correction according to the consistency between the predicted shape and the given layout. Experimental results with several benchmark layout patterns demonstrate the effectiveness of the proposed method.

READ FULL TEXT

page 4

page 7

page 8

page 9

page 10

page 11

page 12

page 13

research
01/24/2022

Keeping Deep Lithography Simulators Updated: Global-Local Shape-Based Novelty Detection and Active Learning

Learning-based pre-simulation (i.e., layout-to-fabrication) models have ...
research
07/23/2019

BagNet: Berkeley Analog Generator with Layout Optimizer Boosted with Deep Neural Networks

The discrepancy between post-layout and schematic simulation results con...
research
07/13/2018

Bridging the Gap Between Layout Pattern Sampling and Hotspot Detection via Batch Active Learning

Layout hotpot detection is one of the main steps in modern VLSI design. ...
research
02/22/2016

Planogram Compliance Checking Based on Detection of Recurring Patterns

In this paper, a novel method for automatic planogram compliance checkin...
research
03/08/2022

Virtual Displacement based Discontinuity Layout Optimization

Discontinuity layout optimization (DLO) is a relatively new upper bound ...
research
07/17/2015

Tree-based Visualization and Optimization for Image Collection

The visualization of an image collection is the process of displaying a ...
research
01/11/2021

Learning to Automate Chart Layout Configurations Using Crowdsourced Paired Comparison

We contribute a method to automate parameter configurations for chart la...

Please sign up or login with your details

Forgot password? Click here to reset