Control design for general nonlinear robotic systems with guaranteed stability and/or safety in the presence of model uncertainties is a challenging problem. Recent efforts attempt to learn a controller and a certificate (e.g., a Lyapunov function or a contraction metric) jointly using neural networks (NNs), in which model uncertainties are generally ignored during the learning process. In this paper, for nonlinear systems subject to bounded disturbances, we present a framework for jointly learning a robust nonlinear controller and a contraction metric using a novel disturbance rejection objective that certifies a universal $\mathcal L_\infty$ gain bound using NNs for user-specified variables. The learned controller aims to minimize the eff...
We propose a novel framework for learning stabilizable nonlinear dynamical systems for continuous co...
Recent research shows that supervised learning can be an effective tool for designing near-optimal f...
Recent research has shown that supervised learning can be an effective tool for designing optimal fe...
This paper presents an approach to trajectory-centric learning control based on contraction metrics ...
Stability certification and identifying a safe and stabilizing initial set are two important concern...
Learning-enabled control systems have demonstrated impressive empirical performance on challenging c...
This paper presents an approach towards guaranteed trajectory tracking for nonlinear control-affine ...
Autonomous robots that are capable of operating safely in the presence of imperfect model knowledge ...
An interlaced method to learn and control nonlinear system dynamics from a set of demonstrations is ...
We propose new methods to synthesize control barrier function (CBF)-based safe controllers that avoi...
Among the major challenges in neural control system technology is the validation and certification o...
We consider the problem of synthesis of safe controllers for nonlinear systems with unknown dynamics...
This letter presents a new deep learning-based framework for robust nonlinear estimation and control...
The last decade has witnessed tremendous success in using machine learning (ML) to control physical ...
Machine learning and AI have been used for achieving autonomy in various aerospace and robotic syste...
We propose a novel framework for learning stabilizable nonlinear dynamical systems for continuous co...
Recent research shows that supervised learning can be an effective tool for designing near-optimal f...
Recent research has shown that supervised learning can be an effective tool for designing optimal fe...
This paper presents an approach to trajectory-centric learning control based on contraction metrics ...
Stability certification and identifying a safe and stabilizing initial set are two important concern...
Learning-enabled control systems have demonstrated impressive empirical performance on challenging c...
This paper presents an approach towards guaranteed trajectory tracking for nonlinear control-affine ...
Autonomous robots that are capable of operating safely in the presence of imperfect model knowledge ...
An interlaced method to learn and control nonlinear system dynamics from a set of demonstrations is ...
We propose new methods to synthesize control barrier function (CBF)-based safe controllers that avoi...
Among the major challenges in neural control system technology is the validation and certification o...
We consider the problem of synthesis of safe controllers for nonlinear systems with unknown dynamics...
This letter presents a new deep learning-based framework for robust nonlinear estimation and control...
The last decade has witnessed tremendous success in using machine learning (ML) to control physical ...
Machine learning and AI have been used for achieving autonomy in various aerospace and robotic syste...
We propose a novel framework for learning stabilizable nonlinear dynamical systems for continuous co...
Recent research shows that supervised learning can be an effective tool for designing near-optimal f...
Recent research has shown that supervised learning can be an effective tool for designing optimal fe...