Predictive control of a water distribution system based on process historian data
暂无分享,去创建一个
D. Muñoz de la Peña | Teodoro Alamo | Daniel R. Ramirez | Jose R. Salvador | T. Alamo | D. Ramírez | D. Muñoz de la Peña | D. M. D. L. Peña | J. R. Salvador | D. Ramirez
[1] Zhongsheng Hou,et al. Data-driven approximate Q-learning stabilization with optimality error bound analysis , 2019, Autom..
[2] C. Ocampo‐Martinez,et al. Application of predictive control strategies to the management of complex networks in the urban water cycle [Applications of Control] , 2013, IEEE Control Systems.
[3] Warren B. Powell,et al. Approximate Dynamic Programming - Solving the Curses of Dimensionality , 2007 .
[4] Biao Huang,et al. A data driven subspace approach to predictive controller design , 2001 .
[5] Jakobus E. van Zyl,et al. Operational Optimization of Water Distribution Systems using a Hybrid Genetic Algorithm , 2004 .
[6] Vicenç Puig,et al. Fault-Tolerant Model Predictive Control of Water Transport Networks , 2017 .
[7] Derong Liu,et al. Data-Driven Neuro-Optimal Temperature Control of Water–Gas Shift Reaction Using Stable Iterative Adaptive Dynamic Programming , 2014, IEEE Transactions on Industrial Electronics.
[8] Xin Zhang,et al. Data-Driven Robust Approximate Optimal Tracking Control for Unknown General Nonlinear Systems Using Adaptive Dynamic Programming Method , 2011, IEEE Transactions on Neural Networks.
[9] Jianbin Qiu,et al. Data-Based Optimal Control for Networked Double-Layer Industrial Processes , 2017, IEEE Transactions on Industrial Electronics.
[10] Lorenzo Fagiano,et al. Learning a Nonlinear Controller From Data: Theory, Computation, and Experimental Results , 2016, IEEE Transactions on Automatic Control.
[11] Massimo Canale,et al. Nonlinear model predictive control from data: a set membership approach , 2014 .
[12] Vicenç Puig,et al. Economic model predictive control based on a periodicity constraint , 2018, Journal of Process Control.
[13] T. Alamo,et al. A General Framework for Predictors Based on Bounding Techniques and Local Approximation , 2017, IEEE Transactions on Automatic Control.
[14] Benjamin Karg,et al. Learning-based approximation of robust nonlinear predictive control with state estimation applied to a towing kite , 2019, 2019 18th European Control Conference (ECC).
[15] Bart De Moor,et al. Subspace algorithms for the stochastic identification problem, , 1993, Autom..
[16] Alberto Bemporad,et al. Direct Data-Driven Control of Constrained Systems , 2018, IEEE Transactions on Control Systems Technology.
[17] Jay H. Lee,et al. Approximate dynamic programming-based approaches for input-output data-driven control of nonlinear processes , 2005, Autom..
[18] Hado van Hasselt,et al. Reinforcement Learning in Continuous State and Action Spaces , 2012, Reinforcement Learning.
[19] Rahul Mangharam,et al. Data predictive control using regression trees and ensemble learning , 2017, 2017 IEEE 56th Annual Conference on Decision and Control (CDC).
[20] Goele Pipeleers,et al. A Data-Driven Constrained Norm-Optimal Iterative Learning Control Framework for LTI Systems , 2013, IEEE Transactions on Control Systems Technology.
[21] Carlo Novara,et al. Unified Set Membership theory for identification, prediction and filtering of nonlinear systems , 2011, Autom..
[22] Lorenzo Fagiano,et al. Data-driven control of nonlinear systems: An on-line direct approach , 2017, Autom..
[23] Bart De Moor,et al. A unifying theorem for three subspace system identification algorithms , 1995, Autom..
[24] Jacob Roll,et al. Nonlinear system identification via direct weight optimization , 2005, Autom..
[25] Shangtai Jin,et al. Data-driven optimal terminal iterative learning control , 2012 .
[26] Jan M. Maciejowski,et al. Learning-based Nonlinear Model Predictive Control * *The authors would like to ackowledge to the Spanish MINECO Grant PRX15-00300 and projects DPI2013-48243-C2-2-R and DPI2016-76493-C3-1-R as well as to the Engineering and Physical Research Council, grant no. EP/J012300/1 for funding this work. , 2017 .