Recent research shows that supervised learning can be an effective tool for designing near-optimal feedback controllers for high-dimensional nonlinear dynamic systems. But the behavior of neural network controllers is still not well understood. In particular, some neural networks with high test accuracy can fail to even locally stabilize the dynamic system. To address this challenge we propose several novel neural network architectures, which we show guarantee local asymptotic stability while retaining the approximation capacity to learn the optimal feedback policy semi-globally. The proposed architectures are compared against standard neural network feedback controllers through numerical simulations of two high-dimensional nonlinear optima...
Recent research reveals that deep learning is an effective way of solving high dimensional Hamilton-...
The article of record as published may be found at http://dx.doi.org/10.1137/19M1288802Computing opt...
This paper considers the problem of controlling a dynamical system when the state cannot be directly...
Recent research has shown that supervised learning can be an effective tool for designing optimal fe...
Designing optimal feedback controllers for nonlinear dynamical systems requires solving Hamilton-Jac...
Stability certification and identifying a safe and stabilizing initial set are two important concern...
The ability to certify systems driven by neural networks is crucial for future rollouts of machine l...
We propose a neural network approach for solving high-dimensional optimal control problems. In parti...
Optimal control problems naturally arise in many scientific applications where one wishes to steer a...
Iterative linear quadratic regulator (iLQR) has gained wide popularity in addressing trajectory opti...
Caption title.Includes bibliographical references (leaf 23).Supported by an NSF graduate fellowship....
This work presents a novel methodology for analysis and control of nonlinear fluid systems using neu...
Optimal control methods for linear systems have reached a substantial level of maturity, both in ter...
This paper traces the development of neural-network (NN)-based feedback controllers that are derived...
We study the ability of neural networks to calculate feedback control signals that steer trajectorie...
Recent research reveals that deep learning is an effective way of solving high dimensional Hamilton-...
The article of record as published may be found at http://dx.doi.org/10.1137/19M1288802Computing opt...
This paper considers the problem of controlling a dynamical system when the state cannot be directly...
Recent research has shown that supervised learning can be an effective tool for designing optimal fe...
Designing optimal feedback controllers for nonlinear dynamical systems requires solving Hamilton-Jac...
Stability certification and identifying a safe and stabilizing initial set are two important concern...
The ability to certify systems driven by neural networks is crucial for future rollouts of machine l...
We propose a neural network approach for solving high-dimensional optimal control problems. In parti...
Optimal control problems naturally arise in many scientific applications where one wishes to steer a...
Iterative linear quadratic regulator (iLQR) has gained wide popularity in addressing trajectory opti...
Caption title.Includes bibliographical references (leaf 23).Supported by an NSF graduate fellowship....
This work presents a novel methodology for analysis and control of nonlinear fluid systems using neu...
Optimal control methods for linear systems have reached a substantial level of maturity, both in ter...
This paper traces the development of neural-network (NN)-based feedback controllers that are derived...
We study the ability of neural networks to calculate feedback control signals that steer trajectorie...
Recent research reveals that deep learning is an effective way of solving high dimensional Hamilton-...
The article of record as published may be found at http://dx.doi.org/10.1137/19M1288802Computing opt...
This paper considers the problem of controlling a dynamical system when the state cannot be directly...