Deep reinforcement learning (DRL) has proven capable of superhuman performance on many complex tasks. To achieve this success, DRL algorithms train a decision-making agent …
This paper provides an introduction and overview of recent work on control barrier functions and their use to verify and enforce safety properties in the context of (optimization based) …
JF Fisac, AK Akametalu, MN Zeilinger… - … on Automatic Control, 2018 - ieeexplore.ieee.org
The proven efficacy of learning-based control schemes strongly motivates their application to robotic systems operating in the physical world. However, guaranteeing correct operation …
L Kong, W He, Z Liu, X Yu… - IEEE Transactions on …, 2022 - ieeexplore.ieee.org
In this article, a novel adaptive tracking control technique is developed for multiple-input- multiple-output nonlinear systems with model uncertainty and under output constraints …
W Xiao, C Belta - 2019 IEEE 58th conference on decision and …, 2019 - ieeexplore.ieee.org
This paper extends control barrier functions (CBFs) to high order control barrier functions (HOCBFs) that can be used for high relative degree constraints. The proposed HOCBFs are …
This paper develops a control methodology that unifies control barrier functions and control Lyapunov functions through quadratic programs. The result is demonstrated on adaptive …
A Majumdar, R Tedrake - The International Journal of …, 2017 - journals.sagepub.com
We consider the problem of generating motion plans for a robot that are guaranteed to succeed despite uncertainty in the environment, parametric model uncertainty, and …
A foundational text that offers a rigorous introduction to the principles of design, specification, modeling, and analysis of cyber-physical systems. A cyber-physical system …
Although there are fruitful results on adaptive control of constrained parametric/ nonparametric strict-feedback nonlinear systems, most of them are contingent upon …