Daniel G. Sbarbaro-Hofer
Daniel G. Sbarbaro-Hofer
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Neural networks for control systems—a survey
KJ Hunt, D Sbarbaro, R Żbikowski, PJ Gawthrop
Automatica 28 (6), 1083-1112, 1992
Neural networks for nonlinear internal model control
KJ Hunt, D Sbarbaro
IEE Proceedings D (Control Theory and Applications) 138 (5), 431-438, 1991
Multiobjective switching state selector for finite-states model predictive control based on fuzzy decision making in a matrix converter
F Villarroel, JR Espinoza, CA Rojas, J Rodriguez, M Rivera, D Sbarbaro
IEEE Transactions on Industrial Electronics 60 (2), 589-599, 2012
Design of a discrete-time linear control strategy for a multicell UPQC
JA Muñoz, JR Espinoza, CR Baier, LA Morán, EE Espinosa, PE Melin, ...
IEEE Transactions on Industrial Electronics 59 (10), 3797-3807, 2011
Irreversible port-Hamiltonian systems: A general formulation of irreversible processes with application to the CSTR
H Ramirez, B Maschke, D Sbarbaro
Chemical Engineering Science 89, 223-234, 2013
Advanced control and supervision of mineral processing plants
D Sbárbaro, R Del Villar
Springer Science & Business Media, 2010
An adaptive sliding-mode controller for discrete nonlinear systems
D Munoz, D Sbarbaro
IEEE transactions on industrial electronics 47 (3), 574-581, 2000
Neural control of a steel rolling mill
D Sbarbaro-Hofer, D Neumerkel, K Hunt
IEEE Control Systems Magazine 13 (3), 69-75, 1993
On the control of non-linear processes: An IDA–PBC approach
H Ramirez, D Sbarbaro, R Ortega
Journal of Process Control 19 (3), 405-414, 2009
Adaptive, cautious, predictive control with Gaussian process priors
R Murray-Smith, D Sbarbaro, CE Rasmussen, A Girard
IFAC Proceedings Volumes 36 (16), 1155-1160, 2003
Nonlinear adaptive control using nonparametric Gaussian process prior models
R Murray-Smith, D Sbarbaro
IFAC Proceedings Volumes 35 (1), 325-330, 2002
Observer‐based event‐triggered control co‐design for linear systems
S Tarbouriech, A Seuret, J Manoel Gomes da Silva Jr, D Sbarbaro
IET Control Theory & Applications 10 (18), 2466-2473, 2016
R. bikowski, and P. Gawthrop
K Hunt, D Sbarbaro
Neural networks for control systems-a survey. Automatica 28 (6), 1083-1112, 1992
Neural networks for modelling and control of a non-linear dynamic system
R Murray-Smith, D Neumerkel, D Sbarbaro-Hofer
Institute of Electrical and Electronics Engineers (IEEE), 1992
On the spectral bands measurements for combustion monitoring
L Arias, S Torres, D Sbarbaro, P Ngendakumana
Combustion and Flame 158 (3), 423-433, 2011
Optimal control of a rougher flotation process based on dynamic programming
M Maldonado, D Sbarbaro, E Lizama
Minerals engineering 20 (3), 221-232, 2007
Modelling and control of multi-energy systems: An irreversible port-Hamiltonian approach
H Ramirez, B Maschke, D Sbarbaro
European journal of control 19 (6), 513-520, 2013
Partial stabilization of input-output contact systems on a Legendre submanifold
H Ramirez, B Maschke, D Sbarbaro
IEEE Transactions on Automatic Control 62 (3), 1431-1437, 2016
Adaptive soft-sensors for on-line particle size estimation in wet grinding circuits
D Sbarbaro, P Ascencio, P Espinoza, F Mujica, G Cortes
Control Engineering Practice 16 (2), 171-178, 2008
Economic and technical evaluation of solar-assisted water pump stations for mining applications: a case of study
M Montorfano, D Sbarbaro, L Moran
IEEE Transactions on Industry Applications 52 (5), 4454-4459, 2016
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