Paper ID: 2207.00445
Using Neural Networks for Novelty-based Test Selection to Accelerate Functional Coverage Closure
Xuan Zheng, Kerstin Eder, Tim Blackmore
Novel test selectors used in simulation-based verification have been shown to significantly accelerate coverage closure regardless of the number of coverage holes. This paper presents a configurable and highly-automated framework for novel test selection based on neural networks. Three configurations of this framework are tested with a commercial signal processing unit. All three convincingly outperform random test selection with the largest saving of simulation being 49.37% to reach 99.5% coverage. The computational expense of the configurations is negligible compared to the simulation reduction. We compare the experimental results and discuss important characteristics related to the performance of the configurations.
Submitted: Jul 1, 2022