Learning Based
Learning-based approaches are revolutionizing various fields by enabling systems to learn complex behaviors and adapt to dynamic environments, primarily aiming to improve efficiency, robustness, and safety. Current research focuses on applying deep reinforcement learning, diffusion models, and Koopman operators to control robots, optimize planning algorithms (like those for pathfinding and task sequencing), and improve the accuracy and efficiency of simulations. These advancements have significant implications for robotics, autonomous systems, and other domains requiring adaptable and intelligent control, offering solutions to challenges in areas such as safe navigation, precise manipulation, and efficient resource allocation.
Papers
PLUTO: Pushing the Limit of Imitation Learning-based Planning for Autonomous Driving
Jie Cheng, Yingbing Chen, Qifeng Chen
TWIMP: Two-Wheel Inverted Musculoskeletal Pendulum as a Learning Control Platform in the Real World with Environmental Physical Contact
Kento Kawaharazuka, Tasuku Makabe, Shogo Makino, Kei Tsuzuki, Yuya Nagamatsu, Yuki Asano, Takuma Shirai, Fumihito Sugai, Kei Okada, Koji Kawasaki, Masayuki Inaba
Improving a Proportional Integral Controller with Reinforcement Learning on a Throttle Valve Benchmark
Paul Daoudi, Bojan Mavkov, Bogdan Robu, Christophe Prieur, Emmanuel Witrant, Merwan Barlier, Ludovic Dos Santos
Learning control strategy in soft robotics through a set of configuration spaces
Etienne Ménager, Christian Duriez
Large Language Model-Based Interpretable Machine Learning Control in Building Energy Systems
Liang Zhang, Zhelun Chen
A Digital Twin prototype for traffic sign recognition of a learning-enabled autonomous vehicle
Mohamed AbdElSalam, Loai Ali, Saddek Bensalem, Weicheng He, Panagiotis Katsaros, Nikolaos Kekatos, Doron Peled, Anastasios Temperekidis, Changshun Wu