This paper presents a novel data-driven control scheme called Multi-Objective Learning Model Predictive Control (MO-LMPC) that leverages iterative task executions to enhance the closed-loop performance of linear systems with respect to multiple, potentially competing, control objectives.
This paper proposes a novel framework for robust nonlinear model predictive control (NMPC) of large-scale distributed parameter systems (DPS) under uncertainty, employing a powerful combination of polynomial chaos expansion (PCE), proper orthogonal decomposition (POD), and recurrent neural networks (RNNs) to handle uncertainty, high dimensionality, and non-convexity.
This paper introduces a novel hierarchical Model Predictive Control (MPC) framework that leverages goal-conditioned terminal value learning and a surrogate robot model to achieve real-time, multi-task control of complex robotic systems.
Adaptive Economic Model Predictive Control ensures performance guarantees for linear systems.
Lattice PWA approximation effectively stabilizes satellite attitude control systems.
複雑な動作の合成を可能にするCAFE-MPCの核メッセージは、高度なモデル予測制御フレームワークである。
Actor-Critic Model Predictive Control combines the benefits of RL and MPC for agile flight control.
The author introduces a novel optimization-based control framework, CAFE-MPC, that strategically relaxes planning constraints for computational efficiency while unifying whole-body MPC and whole-body QPs.