Closed Loop
Closed-loop systems, characterized by continuous feedback between a system's output and its input, are a central focus in various fields, aiming to improve system performance, stability, and safety. Current research emphasizes the application of closed-loop principles in diverse areas, including robotics (using model predictive control, reinforcement learning, and large language models for task planning and control), autonomous driving (leveraging generative models and simulation for training and evaluation), and even biological systems (exploring homeostatic control mechanisms). This focus on closed-loop design is driving advancements in control theory, machine learning, and simulation, with significant implications for the development of robust and adaptable systems across numerous applications.
Papers
Dolphin: Closed-loop Open-ended Auto-research through Thinking, Practice, and Feedback
Jiakang Yuan, Xiangchao Yan, Botian Shi, Tao Chen, Wanli Ouyang, Bo Zhang, Lei Bai, Yu Qiao, Bowen Zhou
Imitation Learning of MPC with Neural Networks: Error Guarantees and Sparsification
Hendrik Alsmeier, Lukas Theiner, Anton Savchenko, Ali Mesbah, Rolf Findeisen
Closed-Loop Supervised Fine-Tuning of Tokenized Traffic Models
Zhejun Zhang, Peter Karkus, Maximilian Igl, Wenhao Ding, Yuxiao Chen, Boris Ivanovic, Marco Pavone
Code-as-Monitor: Constraint-aware Visual Programming for Reactive and Proactive Robotic Failure Detection
Enshen Zhou, Qi Su, Cheng Chi, Zhizheng Zhang, Zhongyuan Wang, Tiejun Huang, Lu Sheng, He Wang
Non-Asymptotic Bounds for Closed-Loop Identification of Unstable Nonlinear Stochastic Systems
Seth Siriya, Jingge Zhu, Dragan Nešić, Ye Pu
Preliminary Investigation into Data Scaling Laws for Imitation Learning-Based End-to-End Autonomous Driving
Yupeng Zheng, Zhongpu Xia, Qichao Zhang, Teng Zhang, Ben Lu, Xiaochuang Huo, Chao Han, Yixian Li, Mengjie Yu, Bu Jin, Pengxuan Yang, Yuhang Zheng, Haifeng Yuan, Ke Jiang, Peng Jia, Xianpeng Lang, Dongbin Zhao
Time-Series-Informed Closed-loop Learning for Sequential Decision Making and Control
Sebastian Hirt, Lukas Theiner, Rolf Findeisen
Closed-loop multi-step planning with innate physics knowledge
Giulia Lafratta, Bernd Porr, Christopher Chandler, Alice Miller
DrivingSphere: Building a High-fidelity 4D World for Closed-loop Simulation
Tianyi Yan, Dongming Wu, Wencheng Han, Junpeng Jiang, Xia Zhou, Kun Zhan, Cheng-zhong Xu, Jianbing Shen