Machine learning‐based predictive control of nonlinear processes. Part I: theory Z Wu, A Tran, D Rincon, PD Christofides AIChE Journal 65 (11), e16729, 2019 | 275 | 2019 |
Machine‐learning‐based predictive control of nonlinear processes. Part II: Computational implementation Z Wu, A Tran, D Rincon, PD Christofides AIChE Journal 65 (11), e16734, 2019 | 145 | 2019 |
CFD modeling and control of a steam methane reforming reactor L Lao, A Aguirre, A Tran, Z Wu, H Durand, PD Christofides Chemical Engineering Science 148, 78-92, 2016 | 141 | 2016 |
Process structure-based recurrent neural network modeling for model predictive control of nonlinear processes Z Wu, D Rincon, PD Christofides Journal of Process Control 89, 74-84, 2020 | 139 | 2020 |
Control lyapunov-barrier function-based model predictive control of nonlinear systems Z Wu, F Albalawi, Z Zhang, J Zhang, H Durand, PD Christofides Automatica 109, 108508, 2019 | 112 | 2019 |
A tutorial review of neural network modeling approaches for model predictive control YM Ren, MS Alhajeri, J Luo, S Chen, F Abdullah, Z Wu, PD Christofides Computers & Chemical Engineering 165, 107956, 2022 | 109 | 2022 |
Real-time adaptive machine-learning-based predictive control of nonlinear processes Z Wu, D Rincon, PD Christofides Industrial & Engineering Chemistry Research 59 (6), 2275-2290, 2019 | 109 | 2019 |
Real-time optimization and control of nonlinear processes using machine learning Z Zhang, Z Wu, D Rincon, PD Christofides Mathematics 7 (10), 890, 2019 | 93 | 2019 |
Detecting and handling cyber-attacks in model predictive control of chemical processes Z Wu, F Albalawi, J Zhang, Z Zhang, H Durand, PD Christofides Mathematics 6 (10), 173, 2018 | 71 | 2018 |
Machine learning modeling and predictive control of the batch crystallization process Y Zheng, X Wang, Z Wu Industrial & Engineering Chemistry Research 61 (16), 5578-5592, 2022 | 68 | 2022 |
Machine learning modeling and predictive control of nonlinear processes using noisy data Z Wu, D Rincon, J Luo, PD Christofides AIChE Journal 67 (4), e17164, 2021 | 61 | 2021 |
Economic machine-learning-based predictive control of nonlinear systems Z Wu, PD Christofides Mathematics 7 (6), 494, 2019 | 60 | 2019 |
Statistical machine learning in model predictive control of nonlinear processes Z Wu, D Rincon, Q Gu, PD Christofides Mathematics 9 (16), 1912, 2021 | 57 | 2021 |
Process structure-based recurrent neural network modeling for predictive control: A comparative study MS Alhajeri, J Luo, Z Wu, F Albalawi, PD Christofides Chemical Engineering Research and Design 179, 77-89, 2022 | 53 | 2022 |
Cybersecurity in process control, operations, and supply chain S Parker, Z Wu, PD Christofides Computers & Chemical Engineering 171, 108169, 2023 | 52 | 2023 |
Machine-learning-based state estimation and predictive control of nonlinear processes MS Alhajeri, Z Wu, D Rincon, F Albalawi, PD Christofides Chemical Engineering Research and Design 167, 268-280, 2021 | 52 | 2021 |
Machine learning‐based distributed model predictive control of nonlinear processes S Chen, Z Wu, D Rincon, PD Christofides AIChE Journal 66 (11), e17013, 2020 | 52 | 2020 |
Online learning‐based predictive control of crystallization processes under batch‐to‐batch parametric drift Y Zheng, T Zhao, X Wang, Z Wu AIChE Journal 68 (11), e17815, 2022 | 47 | 2022 |
On integration of feedback control and safety systems: Analyzing two chemical process applications Z Zhang, Z Wu, H Durand, F Albalawi, PD Christofides Chemical Engineering Research and Design 132, 616-626, 2018 | 45 | 2018 |
A cyber‐secure control‐detector architecture for nonlinear processes S Chen, Z Wu, PD Christofides AIChE Journal 66 (5), e16907, 2020 | 44 | 2020 |