Neural networks are expressive function approimators that can be employed for state estimation in control problems. However, control systems with machine learning in the loop often lack stability proofs and performance guarantees, which are crucial for safety-critical applications. In this work, a feedback controller using a feedforward neural network of arbitrary size to estimate unknown dynamics is suggested. The controller is designed for solving a general trajectory tracking problem for a broad class of two-dimensional nonlinear systems. The controller is proven to stabilize the closed-loop system, such that it is input-to-state and finite-gain Lp-stable from the neural network estimation error to the tracking error. Furthermore, the co...
Abstract—In this paper, a stabilization method based on the input–output conicity criterion is prese...
A novel neural network (NN) -based output feedback controller with magnitude constraints is designed...
Unknown nonlinear dynamics often limit the tracking performance of feedforward control. The aim of t...
Neural networks are expressive function approimators that can be employed for state estimation in co...
Recent research has shown that supervised learning can be an effective tool for designing optimal fe...
This paper considers the problem of controlling a dynamical system when the state cannot be directly...
This paper presents an approach to trajectory-centric learning control based on contraction metrics ...
This paper focuses on dynamic learning from neural control for a class of nonlinear strict-feedback ...
The ever increasingly tight control performance requirement of modern mechanical systems often force...
Stability certification and identifying a safe and stabilizing initial set are two important concern...
Learning-based controllers, and especially learning-based model predictive controllers, have been us...
A common problem affecting neural network (NN) approximations of model predictive control (MPC) poli...
Training data for a deep learning (DL) neural network (NN) controller are obtained from the input an...
Recent research shows that supervised learning can be an effective tool for designing near-optimal f...
This paper investigates the problem of output feedback neural network (NN) learning tracking control...
Abstract—In this paper, a stabilization method based on the input–output conicity criterion is prese...
A novel neural network (NN) -based output feedback controller with magnitude constraints is designed...
Unknown nonlinear dynamics often limit the tracking performance of feedforward control. The aim of t...
Neural networks are expressive function approimators that can be employed for state estimation in co...
Recent research has shown that supervised learning can be an effective tool for designing optimal fe...
This paper considers the problem of controlling a dynamical system when the state cannot be directly...
This paper presents an approach to trajectory-centric learning control based on contraction metrics ...
This paper focuses on dynamic learning from neural control for a class of nonlinear strict-feedback ...
The ever increasingly tight control performance requirement of modern mechanical systems often force...
Stability certification and identifying a safe and stabilizing initial set are two important concern...
Learning-based controllers, and especially learning-based model predictive controllers, have been us...
A common problem affecting neural network (NN) approximations of model predictive control (MPC) poli...
Training data for a deep learning (DL) neural network (NN) controller are obtained from the input an...
Recent research shows that supervised learning can be an effective tool for designing near-optimal f...
This paper investigates the problem of output feedback neural network (NN) learning tracking control...
Abstract—In this paper, a stabilization method based on the input–output conicity criterion is prese...
A novel neural network (NN) -based output feedback controller with magnitude constraints is designed...
Unknown nonlinear dynamics often limit the tracking performance of feedforward control. The aim of t...