Predictive Control
Model Predictive Control (MPC) is an advanced control technique that optimizes a system's trajectory over a future time horizon by iteratively solving optimization problems. Current research emphasizes improving MPC's efficiency and robustness, particularly through integrating machine learning methods like reinforcement learning and neural networks (e.g., using transformers for faster computation or neural networks to approximate MPC solutions), and addressing challenges posed by model uncertainties and safety constraints using techniques such as control barrier functions and Bayesian optimization. These advancements are significantly impacting various fields, including robotics, autonomous vehicles, and energy systems, by enabling more efficient, safe, and adaptable control of complex systems.
Papers
Hey Robot! Personalizing Robot Navigation through Model Predictive Control with a Large Language Model
Diego Martinez-Baselga, Oscar de Groot, Luzia Knoedler, Javier Alonso-Mora, Luis Riazuelo, Luis Montano
Cooperative distributed model predictive control for embedded systems: Experiments with hovercraft formations
Gösta Stomberg, Roland Schwan, Andrea Grillo, Colin N. Jones, Timm Faulwasser
Model Predictive Control For Multiple Castaway Tracking with an Autonomous Aerial Agent
Andreas Anastasiou, Savvas Papaioannou, Panayiotis Kolios, Christos G. Panayiotou
Safety Verification and Navigation for Autonomous Vehicles based on Signal Temporal Logic Constraints
Aditya Parameshwaran, Yue Wang
A Non-Linear Model Predictive Task-Space Controller Satisfying Shape Constraints for Tendon-Driven Continuum Robots
Maximillian Hachen, Chengnan Shentu, Sven Lilge, Jessica Burgner-Kahrs
Towards safe and tractable Gaussian process-based MPC: Efficient sampling within a sequential quadratic programming framework
Manish Prajapat, Amon Lahr, Johannes Köhler, Andreas Krause, Melanie N. Zeilinger
Predictive Control and Regret Analysis of Non-Stationary MDP with Look-ahead Information
Ziyi Zhang, Yorie Nakahira, Guannan Qu