<HashMap><database>biostudies-literature</database><scores/><additional><omics_type>Unknown</omics_type><volume>12224</volume><submitter>Lahiri S</submitter><pubmed_abstract>This paper presents the Neural Network Verification (NNV) software tool, a set-based verification framework for deep neural networks (DNNs) and learning-enabled cyber-physical systems (CPS). The crux of NNV is a collection of reachability algorithms that make use of a variety of set representations, such as polyhedra, star sets, zonotopes, and abstract-domain representations. NNV supports both exact (sound and complete) and over-approximate (sound) reachability algorithms for verifying safety and robustness properties of feed-forward neural networks (FFNNs) with various activation functions. For learning-enabled CPS, such as closed-loop control systems incorporating neural networks, NNV provides exact and over-approximate reachability analysis schemes for linear plant models and FFNN controllers with piecewise-linear activation functions, such as ReLUs. For similar neural network control systems (NNCS) that instead have nonlinear plant models, NNV supports over-approximate analysis by combining the star set analysis used for FFNN controllers with zonotope-based analysis for nonlinear plant dynamics building on CORA. We evaluate NNV using two real-world case studies: the first is safety verification of ACAS Xu networks, and the second deals with the safety verification of a deep learning-based adaptive cruise control system.</pubmed_abstract><journal>Computer Aided Verification32nd International Conference, CAV 2020, Los Angeles, CA, USA, July 21–24, 2020, Proceedings, Part I</journal><pagination>3-17</pagination><full_dataset_link>https://www.ebi.ac.uk/biostudies/studies/S-EPMC7363192</full_dataset_link><repository>biostudies-literature</repository><pubmed_title>NNV: The Neural Network Verification Tool for Deep Neural Networks and Learning-Enabled Cyber-Physical Systems</pubmed_title><pmcid>PMC7363192</pmcid><pubmed_authors>Yang X</pubmed_authors><pubmed_authors>Bak S</pubmed_authors><pubmed_authors>Wang C</pubmed_authors><pubmed_authors>Musau P</pubmed_authors><pubmed_authors>Tran H</pubmed_authors><pubmed_authors>Lahiri S</pubmed_authors><pubmed_authors>Xiang W</pubmed_authors><pubmed_authors>Johnson T</pubmed_authors><pubmed_authors>Manzanas Lopez D</pubmed_authors><pubmed_authors>Nguyen L</pubmed_authors></additional><is_claimable>false</is_claimable><name>NNV: The Neural Network Verification Tool for Deep Neural Networks and Learning-Enabled Cyber-Physical Systems</name><description>This paper presents the Neural Network Verification (NNV) software tool, a set-based verification framework for deep neural networks (DNNs) and learning-enabled cyber-physical systems (CPS). The crux of NNV is a collection of reachability algorithms that make use of a variety of set representations, such as polyhedra, star sets, zonotopes, and abstract-domain representations. NNV supports both exact (sound and complete) and over-approximate (sound) reachability algorithms for verifying safety and robustness properties of feed-forward neural networks (FFNNs) with various activation functions. For learning-enabled CPS, such as closed-loop control systems incorporating neural networks, NNV provides exact and over-approximate reachability analysis schemes for linear plant models and FFNN controllers with piecewise-linear activation functions, such as ReLUs. For similar neural network control systems (NNCS) that instead have nonlinear plant models, NNV supports over-approximate analysis by combining the star set analysis used for FFNN controllers with zonotope-based analysis for nonlinear plant dynamics building on CORA. We evaluate NNV using two real-world case studies: the first is safety verification of ACAS Xu networks, and the second deals with the safety verification of a deep learning-based adaptive cruise control system.</description><dates><release>2020-01-01T00:00:00Z</release><publication>2020 Jun</publication><modification>2020-09-28T07:01:42Z</modification><creation>2020-09-28T07:01:42Z</creation></dates><accession>S-EPMC7363192</accession><cross_references/></HashMap>