Optimal Control
Optimal control aims to find the best way to manipulate a system's inputs to achieve a desired outcome, often by minimizing a cost function subject to constraints. Current research emphasizes efficient algorithms for solving optimal control problems, particularly for high-dimensional systems, with a focus on methods like model predictive control, reinforcement learning (including deep reinforcement learning and its variants), and deep operator networks. These advancements are driving progress in diverse fields, including robotics (trajectory optimization, safe navigation, and control of complex systems), and process control (e.g., optimizing energy consumption and ensuring safety).
Papers
cc-DRL: a Convex Combined Deep Reinforcement Learning Flight Control Design for a Morphing Quadrotor
Tao Yang, Huai-Ning Wu, Jun-Wei Wang
Optimal OnTheFly Feedback Control of Event Sensors
Valery Vishnevskiy, Greg Burman, Sebastian Kozerke, Diederik Paul Moeys
A Safe Self-evolution Algorithm for Autonomous Driving Based on Data-Driven Risk Quantification Model
Shuo Yang, Shizhen Li, Yanjun Huang, Hong Chen