A Bayesian perspective on stochastic neurocontrol


Autoria(s): Herzallah, Randa; Lowe, David
Data(s)

01/05/2008

Resumo

Control design for stochastic uncertain nonlinear systems is traditionally based on minimizing the expected value of a suitably chosen loss function. Moreover, most control methods usually assume the certainty equivalence principle to simplify the problem and make it computationally tractable. We offer an improved probabilistic framework which is not constrained by these previous assumptions, and provides a more natural framework for incorporating and dealing with uncertainty. The focus of this paper is on developing this framework to obtain an optimal control law strategy using a fully probabilistic approach for information extraction from process data, which does not require detailed knowledge of system dynamics. Moreover, the proposed control method framework allows handling the problem of input-dependent noise. A basic paradigm is proposed and the resulting algorithm is discussed. The proposed probabilistic control method is for the general nonlinear class of discrete-time systems. It is demonstrated theoretically on the affine class. A nonlinear simulation example is also provided to validate theoretical development.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/15539/1/Bayesian_perspective_on_stochastic_neurocontrol.pdf

Herzallah, Randa and Lowe, David (2008). A Bayesian perspective on stochastic neurocontrol. IEEE Transactions on Neural Networks and Learning Systems, 19 (5), pp. 914-924.

Relação

http://eprints.aston.ac.uk/15539/

Tipo

Article

PeerReviewed