A probabilistic indirect adaptive controller is proposed for the general nonlinear multivariate class of discrete time system. The proposed probabilistic framework incorporates input–dependent noise prediction parameters in the derivation of the optimal control law. Moreover, because noise can be nonstationary in practice, the proposed adaptive control algorithm provides an elegant method for estimating and tracking the noise. For illustration purposes, the developed method is applied to the affine class of nonlinear multivariate discrete time systems and the desired result is obtained: the optimal control law is determined by solving a cubic equation and the distribution of the tracking error is shown to be Gaussian with zero mean. The eff...
We consider the direct adaptive inverse control of nonlinear multivariable systems with different de...
Recently, probabilistic methods and statistical learning theory have been shown to provide approxima...
Nonparametric Gaussian Process models, a Bayesian statistics approach, are used to implement a nonli...
A probabilistic indirect adaptive controller is proposed for the general nonlinear multivariate clas...
Control design for stochastic uncertain nonlinear systems is traditionally based on minimizing the e...
In this paper a new framework has been applied to the design of controllers which encompasses nonlin...
Nonparametric Gaussian Process prior models, taken from Bayesian statistics methodology are used to ...
This paper develops a probabilistic multimodal adaptive control approach for systems that are charac...
Robust controllers for nonlinear stochastic systems with functional uncertainties can be consistentl...
The general theory of stochastic optimal control is based on determining a control which minimizes a...
This paper develops a novel approach to adaptive active noise control based on the theory of Bayesia...
This article proposes the exploitation of the Kullback–Leibler divergence to characterise the uncert...
Following the recently developed algorithms for fully probabilistic control design for general dynam...
Abstract: In this paper, a framework for Nonlinear Model Predictive Control (NMPC) that explicitly i...
We consider the direct adaptive inverse control of nonlinear multivariable systems with different de...
Recently, probabilistic methods and statistical learning theory have been shown to provide approxima...
Nonparametric Gaussian Process models, a Bayesian statistics approach, are used to implement a nonli...
A probabilistic indirect adaptive controller is proposed for the general nonlinear multivariate clas...
Control design for stochastic uncertain nonlinear systems is traditionally based on minimizing the e...
In this paper a new framework has been applied to the design of controllers which encompasses nonlin...
Nonparametric Gaussian Process prior models, taken from Bayesian statistics methodology are used to ...
This paper develops a probabilistic multimodal adaptive control approach for systems that are charac...
Robust controllers for nonlinear stochastic systems with functional uncertainties can be consistentl...
The general theory of stochastic optimal control is based on determining a control which minimizes a...
This paper develops a novel approach to adaptive active noise control based on the theory of Bayesia...
This article proposes the exploitation of the Kullback–Leibler divergence to characterise the uncert...
Following the recently developed algorithms for fully probabilistic control design for general dynam...
Abstract: In this paper, a framework for Nonlinear Model Predictive Control (NMPC) that explicitly i...
We consider the direct adaptive inverse control of nonlinear multivariable systems with different de...
Recently, probabilistic methods and statistical learning theory have been shown to provide approxima...
Nonparametric Gaussian Process models, a Bayesian statistics approach, are used to implement a nonli...