Discovering governing equations from data by sparse identification of nonlinear dynamical systems SL Brunton, JL Proctor, JN Kutz Proceedings of the national academy of sciences 113 (15), 3932-3937, 2016 | 3859 | 2016 |
Dynamic mode decomposition: data-driven modeling of complex systems JN Kutz, SL Brunton, BW Brunton, JL Proctor Society for Industrial and Applied Mathematics, 2016 | 1620 | 2016 |
Data-driven discovery of partial differential equations SH Rudy, SL Brunton, JL Proctor, JN Kutz Science advances 3 (4), e1602614, 2017 | 1406 | 2017 |
Dynamic Mode Decomposition with control JL Proctor, SL Brunton, JN Kutz SIAM Journal on Applied Dynamical Systems 15 (1), 142–161, 2016 | 981 | 2016 |
Koopman invariant subspaces and finite linear representations of nonlinear dynamical systems for control SL Brunton, BW Brunton, JL Proctor, JN Kutz PloS one 11 (2), e0150171, 2016 | 548 | 2016 |
Chaos as an intermittently forced linear system SL Brunton, BW Brunton, JL Proctor, E Kaiser, JN Kutz Nature communications 8 (1), 19, 2017 | 537 | 2017 |
Inferring biological networks by sparse identification of nonlinear dynamics NM Mangan, SL Brunton, JL Proctor, JN Kutz IEEE Transactions on Molecular, Biological and Multi-Scale Communications 2 …, 2016 | 398 | 2016 |
Generalizing Koopman theory to allow for inputs and control JL Proctor, SL Brunton, JN Kutz SIAM Journal on Applied Dynamical Systems 17 (1), 909-930, 2018 | 344 | 2018 |
Sparse identification of nonlinear dynamics with control (SINDYc) SL Brunton, JL Proctor, JN Kutz IFAC-PapersOnLine 49 (18), 710-715, 2016 | 300 | 2016 |
Model selection for dynamical systems via sparse regression and information criteria NM Mangan, JN Kutz, SL Brunton, JL Proctor Proceedings of the Royal Society A: Mathematical, Physical and Engineering …, 2017 | 282 | 2017 |
Discovering dynamic patterns from infectious disease data using dynamic mode decomposition JL Proctor, PA Eckhoff International health 7 (2), 139-145, 2015 | 227 | 2015 |
Modeling malaria genomics reveals transmission decline and rebound in Senegal RF Daniels, SF Schaffner, EA Wenger, JL Proctor, HH Chang, W Wong, ... Proceedings of the National Academy of Sciences 112 (22), 7067-7072, 2015 | 189 | 2015 |
Compressed sensing and dynamic mode decomposition SL Brunton, JL Proctor, JH Tu, JN Kutz Journal of computational dynamics 2 (2), 165-191, 2016 | 165 | 2016 |
Model selection for hybrid dynamical systems via sparse regression NM Mangan, T Askham, SL Brunton, JN Kutz, JL Proctor Proceedings of the Royal Society A 475 (2223), 20180534, 2019 | 103 | 2019 |
Passive mode-locking by use of waveguide arrays JL Proctor, JN Kutz Optics letters 30 (15), 2013-2015, 2005 | 94 | 2005 |
Dynamic mode decomposition for compressive system identification Z Bai, E Kaiser, JL Proctor, JN Kutz, SL Brunton AIAA Journal 58 (2), 561-574, 2020 | 93 | 2020 |
Sparse sensor placement optimization for classification BW Brunton, SL Brunton, JL Proctor, JN Kutz SIAM Journal on Applied Mathematics 76 (5), 2099-2122, 2016 | 91 | 2016 |
Applied Koopman theory for partial differential equations and data-driven modeling of spatio-temporal systems J Nathan Kutz, JL Proctor, SL Brunton Complexity 2018, 1-16, 2018 | 84 | 2018 |
Exploiting sparsity and equation-free architectures in complex systems JL Proctor, SL Brunton, BW Brunton, JN Kutz The European Physical Journal Special Topics 223 (13), 2665-2684, 2014 | 80 | 2014 |
Nonlinear mode-coupling for passive mode-locking: application of waveguide arrays, dual-core fibers, and/or fiber arrays J Proctor, JN Kutz Optics express 13 (22), 8933-8950, 2005 | 80 | 2005 |