Output measurement for nonlinear optimal control problems is an interesting issue. Because the structure of the real plant is complex, the output channel could give a significant response corresponding to the real plant. In this paper, a least squares scheme, which is based on the Gauss-Newton algorithm, is proposed. The aim is to approximate the output that is measured from the real plant. In doing so, an appropriate output measurement from the model used is suggested. During the computation procedure, the control trajectory is updated iteratively by using the Gauss-Newton recursion scheme. Consequently, the output residual between the original output and the suggested output is minimized. Here, the linear model-based optimal control model...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
*authors contributed equally Abstract—In this paper we present a fully automated ap-proach to (appro...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
In this paper, we propose an output regulation approach, which is based on principle of model-realit...
A computational approach is proposed for solving the discrete time nonlinear stochastic optimal cont...
A computational approach is proposed for solving the discrete time nonlinear stochastic optimal cont...
In this paper, an efficient computational algorithm is proposed to solve the nonlinear optimal contr...
In this paper, we propose a computational approach to solve a model-based optimal control problem. O...
An iterative algorithm, which is called the integrated optimal control and parameter estimation algo...
A new method is proposed to solve the model inversion problem that is part of model based iterative ...
Parameter estimation problems of mathematical models can often be formulated as nonlinear least squa...
In this paper, we propose an efficient algorithm for solving a non-linear stochastic optimal control...
Parameter estimation problems of mathematical models can often be formulated as nonlinear least squa...
In this paper, the testing of linear models with different parameter values is conducted for solving...
Abstract. Modeling the mean of a random variable as a function of unknown parameters leads to a nonl...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
*authors contributed equally Abstract—In this paper we present a fully automated ap-proach to (appro...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
In this paper, we propose an output regulation approach, which is based on principle of model-realit...
A computational approach is proposed for solving the discrete time nonlinear stochastic optimal cont...
A computational approach is proposed for solving the discrete time nonlinear stochastic optimal cont...
In this paper, an efficient computational algorithm is proposed to solve the nonlinear optimal contr...
In this paper, we propose a computational approach to solve a model-based optimal control problem. O...
An iterative algorithm, which is called the integrated optimal control and parameter estimation algo...
A new method is proposed to solve the model inversion problem that is part of model based iterative ...
Parameter estimation problems of mathematical models can often be formulated as nonlinear least squa...
In this paper, we propose an efficient algorithm for solving a non-linear stochastic optimal control...
Parameter estimation problems of mathematical models can often be formulated as nonlinear least squa...
In this paper, the testing of linear models with different parameter values is conducted for solving...
Abstract. Modeling the mean of a random variable as a function of unknown parameters leads to a nonl...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...
*authors contributed equally Abstract—In this paper we present a fully automated ap-proach to (appro...
Nonlinear least-squares problems appear in many real-world applications. When a nonlinear model is u...