The efficient control of complex dynamical systems has many applications in the natural and applied sciences. In most real-world control problems, both control energy and cost constraints play a significant role. Although such optimal control problems can be formulated within the framework of variational calculus, their solution for complex systems is often analytically and computationally intractable. To overcome this outstanding challenge, we present AI Pontryagin, a versatile control framework based on neural ordinary differential equations that automatically learns control signals that steer high-dimensional dynamical systems towards a desired target state within a specified time interval. We demonstrate the ability of AI Pontryagin to ...
Conventional models of motor control exploit the spatial representation of the controlled system to ...
In this work, we introduce Pontryagin Neural Networks (PoNNs) and employ them to learn the optimal c...
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...
We study the ability of neural networks to steer or control trajectories of dynamical systems on gra...
This thesis presents a novel hierarchical learning framework, Reinforcement Learning Optimal Control...
We study the ability of neural networks to calculate feedback control signals that steer trajectorie...
This paper shows, how wellknown supervised learning techniques can be applied to learn control of un...
We study the ability of neural networks to calculate feedback control signals that steer trajectorie...
This paper considers the problem of controlling a dynamical system when the state cannot be directly...
Thesis (Ph.D.)--University of Washington, 2022Nonlinear dynamical systems are ubiquitous in many fie...
Optimal control methods for linear systems have reached a substantial level of maturity, both in ter...
A fundamental problem of science is designing optimal control policies that manipulate a given envir...
The application of neural networks technology to dynamic system control has been constrained by the ...
Many neural control systems are at least roughly optimized, but how is optimal control learned in t...
Conventional models of motor control exploit the spatial representation of the controlled system to ...
In this work, we introduce Pontryagin Neural Networks (PoNNs) and employ them to learn the optimal c...
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...
We study the ability of neural networks to steer or control trajectories of dynamical systems on gra...
This thesis presents a novel hierarchical learning framework, Reinforcement Learning Optimal Control...
We study the ability of neural networks to calculate feedback control signals that steer trajectorie...
This paper shows, how wellknown supervised learning techniques can be applied to learn control of un...
We study the ability of neural networks to calculate feedback control signals that steer trajectorie...
This paper considers the problem of controlling a dynamical system when the state cannot be directly...
Thesis (Ph.D.)--University of Washington, 2022Nonlinear dynamical systems are ubiquitous in many fie...
Optimal control methods for linear systems have reached a substantial level of maturity, both in ter...
A fundamental problem of science is designing optimal control policies that manipulate a given envir...
The application of neural networks technology to dynamic system control has been constrained by the ...
Many neural control systems are at least roughly optimized, but how is optimal control learned in t...
Conventional models of motor control exploit the spatial representation of the controlled system to ...
In this work, we introduce Pontryagin Neural Networks (PoNNs) and employ them to learn the optimal c...
We propose a neural network approach for solving high-dimensional optimal control problems. In parti...