Abstract — A novel online-computation approach to optimal control of nonlinear, noise-affected systems with continuous state and control spaces is presented. In the proposed algorithm, system noise is explicitly incorporated into the control decision. This leads to superior results compared to state-of-the-art nonlinear controllers that neglect this influence. The solution of an optimal nonlinear controller for a corresponding deterministic system is employed to find a meaningful state space restriction. This restriction is obtained by means of approximate state prediction using the noisy system equation. Within this constrained state space, an optimal closed-loop solution for a finite decisionmaking horizon (prediction horizon) is determin...
In optimal control of uncertain systems, lack of crucial information about the system can lead to un...
This brief studies the stochastic optimal control problem via reinforcement learning and approximate...
Computational models for the neural control of movement must take into account the properties of sen...
A novel online-computation approach to optimal control of nonlinear, noise-affected systems with con...
Abstract — In this paper, a framework for Nonlinear Model Predictive Control (NMPC) for heavily nois...
Abstract: In this paper, a framework for Nonlinear Model Predictive Control (NMPC) that explicitly i...
Model identification and measurement acquisition is always to some degree uncertain. Therefore, a fr...
For deterministic nonlinear dynamical systems, approximate dynamic programming based on Pontryagin\u...
In this paper, a framework for Nonlinear Model Predictive Control (NMPC) that explicitly incorporate...
The objective of this work consists in the offline approximation of possibly discontinuous model pre...
Summarization: General linear continuous stochastic systems are considered with multiplicative noise...
This thesis deals with the robust control of nonlinear systems subject to persistent bounded non-add...
In this dissertation, we study stochastic disturbance rejection, performance, and optimal control. T...
In this manuscript, an optimal time-varying P-controller is presented for a class of continuous-time...
As computational power increases, online optimization is becoming a ubiquitous approach for solving ...
In optimal control of uncertain systems, lack of crucial information about the system can lead to un...
This brief studies the stochastic optimal control problem via reinforcement learning and approximate...
Computational models for the neural control of movement must take into account the properties of sen...
A novel online-computation approach to optimal control of nonlinear, noise-affected systems with con...
Abstract — In this paper, a framework for Nonlinear Model Predictive Control (NMPC) for heavily nois...
Abstract: In this paper, a framework for Nonlinear Model Predictive Control (NMPC) that explicitly i...
Model identification and measurement acquisition is always to some degree uncertain. Therefore, a fr...
For deterministic nonlinear dynamical systems, approximate dynamic programming based on Pontryagin\u...
In this paper, a framework for Nonlinear Model Predictive Control (NMPC) that explicitly incorporate...
The objective of this work consists in the offline approximation of possibly discontinuous model pre...
Summarization: General linear continuous stochastic systems are considered with multiplicative noise...
This thesis deals with the robust control of nonlinear systems subject to persistent bounded non-add...
In this dissertation, we study stochastic disturbance rejection, performance, and optimal control. T...
In this manuscript, an optimal time-varying P-controller is presented for a class of continuous-time...
As computational power increases, online optimization is becoming a ubiquitous approach for solving ...
In optimal control of uncertain systems, lack of crucial information about the system can lead to un...
This brief studies the stochastic optimal control problem via reinforcement learning and approximate...
Computational models for the neural control of movement must take into account the properties of sen...