In this work, an efficient sample-wise data driven control solver will be developed to solve the stochastic optimal control problem with unknown model parameters. A direct filter method will be applied as an online parameter estimation method that dynamically estimates the target model parameters upon receiving the data, and a sample-wise optimal control solver will be provided to efficiently search for the optimal control. Then, an effective overarching algorithm will be introduced to combine the parameter estimator and the optimal control solver. Numerical experiments will be carried out to demonstrate the effectiveness and the efficiency of the sample-wise data driven control method
Many Stochastic Optimal Control (SOC) approaches rely on samples to either obtain an estimate of th...
© 1997 Dr. Andrew LogothetisThis thesis studies the use of the Expectation Maximization (EM) algorit...
Graduation date: 1983The problem of optimization of stochastic dynamic systems with\ud random coeffi...
A computational approach is proposed for solving the discrete time nonlinear stochastic optimal cont...
In this paper, we propose an efficient algorithm for solving a non-linear stochastic optimal control...
In this chapter, the performance of the integrated optimal control and parameter estimation (IOCPE) ...
An iterative algorithm, which is called the integrated optimal control and parameter estimation algo...
This thesis describes the development of an efficient algorithm for solving nonlinear stochastic o...
AbstractThe paper is concerned with the problem of designing optimal strategies for precise paramete...
A computational approach is proposed for solving the discrete time nonlinear stochastic optimal cont...
AbstractThis paper is concerned with the control of linear, discrete-time, stochastic systems with u...
Stochastic Optimal Control is an elegant and general framework for specifying and solving control pr...
Stochastic optimization (SO) is extensively studied in various fields, such as control engineering, ...
We present a numerical method for finite-horizon stochastic optimal control models. We derive a stoc...
We present an empirical, gradient-based method for solving data-driven stochastic optimal control pr...
Many Stochastic Optimal Control (SOC) approaches rely on samples to either obtain an estimate of th...
© 1997 Dr. Andrew LogothetisThis thesis studies the use of the Expectation Maximization (EM) algorit...
Graduation date: 1983The problem of optimization of stochastic dynamic systems with\ud random coeffi...
A computational approach is proposed for solving the discrete time nonlinear stochastic optimal cont...
In this paper, we propose an efficient algorithm for solving a non-linear stochastic optimal control...
In this chapter, the performance of the integrated optimal control and parameter estimation (IOCPE) ...
An iterative algorithm, which is called the integrated optimal control and parameter estimation algo...
This thesis describes the development of an efficient algorithm for solving nonlinear stochastic o...
AbstractThe paper is concerned with the problem of designing optimal strategies for precise paramete...
A computational approach is proposed for solving the discrete time nonlinear stochastic optimal cont...
AbstractThis paper is concerned with the control of linear, discrete-time, stochastic systems with u...
Stochastic Optimal Control is an elegant and general framework for specifying and solving control pr...
Stochastic optimization (SO) is extensively studied in various fields, such as control engineering, ...
We present a numerical method for finite-horizon stochastic optimal control models. We derive a stoc...
We present an empirical, gradient-based method for solving data-driven stochastic optimal control pr...
Many Stochastic Optimal Control (SOC) approaches rely on samples to either obtain an estimate of th...
© 1997 Dr. Andrew LogothetisThis thesis studies the use of the Expectation Maximization (EM) algorit...
Graduation date: 1983The problem of optimization of stochastic dynamic systems with\ud random coeffi...