Integrating machine learning and model predictive control for automotive applications: A review and future directions
In this review paper, the integration of Machine Learning (ML) and Model Predictive Control
(MPC) in Automotive Control System (ACS) applications are discussed. ACS can be divided …
(MPC) in Automotive Control System (ACS) applications are discussed. ACS can be divided …
Reactive planar non-prehensile manipulation with hybrid model predictive control
FR Hogan, A Rodriguez - The International Journal of …, 2020 - journals.sagepub.com
This article presents an offline solution and online approximation to the hybrid control
problem of planar non-prehensile manipulation. Hybrid dynamics and underactuation are …
problem of planar non-prehensile manipulation. Hybrid dynamics and underactuation are …
Coco: Online mixed-integer control via supervised learning
Many robotics problems, from robot motion planning to object manipulation, can be modeled
as mixed-integer convex program (MICPs). However, state-of-the-art algorithms are still …
as mixed-integer convex program (MICPs). However, state-of-the-art algorithms are still …
Accelerating nonlinear model predictive control through machine learning
The high computational requirements of nonlinear model predictive control (NMPC) are a
long-standing issue and, among other methods, learning the control policy with machine …
long-standing issue and, among other methods, learning the control policy with machine …
Learning mixed-integer convex optimization strategies for robot planning and control
Mixed-integer convex programming (MICP) has seen significant algorithmic and hardware
improvements with several orders of magnitude solve time speedups compared to 25 years …
improvements with several orders of magnitude solve time speedups compared to 25 years …
[HTML][HTML] Boosting operational optimization of multi-energy systems by artificial neural nets
The operation of multi-energy systems has to be optimized repeatedly, eg, to react to
changing energy prices. Thus, operational optimization problems need to be solved in a …
changing energy prices. Thus, operational optimization problems need to be solved in a …
Deep learning-based model predictive control for real-time supply chain optimization
J Wang, CLE Swartz, K Huang - Journal of Process Control, 2023 - Elsevier
This paper presents a deep learning-based model predictive control (MPC) method for
operational supply chain optimization in real time. The method follows an offline-online …
operational supply chain optimization in real time. The method follows an offline-online …
Tailored presolve techniques in branch‐and‐bound method for fast mixed‐integer optimal control applications
R Quirynen, S Di Cairano - Optimal Control Applications and …, 2023 - Wiley Online Library
Mixed‐integer model predictive control (MI‐MPC) can be a powerful tool for controlling
hybrid systems. In case of a linear‐quadratic objective in combination with linear or …
hybrid systems. In case of a linear‐quadratic objective in combination with linear or …
Ensemble provably robust learn-to-optimize approach for security-constrained unit commitment
Security-constrained unit commitment (SCUC) is the basis for power systems and markets
operation, which is solved periodically via mixed-integer programming (MIP) with limited …
operation, which is solved periodically via mixed-integer programming (MIP) with limited …
PRISM: Recurrent neural networks and presolve methods for fast mixed-integer optimal control
A Cauligi, A Chakrabarty… - … for Dynamics and …, 2022 - proceedings.mlr.press
While mixed-integer convex programs (MICPs) arise frequently in mixed-integer optimal
control problems (MIOCPs), current state-of-the-art MICP solvers are often too slow for real …
control problems (MIOCPs), current state-of-the-art MICP solvers are often too slow for real …