Abstract

In this paper, a computational approach is proposed for solving the discrete-time nonlinear optimal control problem, which is disturbed by a sequence of random noises. Because of the exact solution of such optimal control problem is impossible to be obtained, estimating the state dynamics is currently required. Here, it is assumed that the output can be measured from the real plant process. In our approach, the state mean propagation is applied in order to construct a linear model-based optimal control problem, where the model output is measureable. On this basis, an output error, which takes into account the differences between the real output and the model output, is defined. Then, this output error is minimized by applying the stochastic approximation approach. During the computation procedure, the stochastic gradient is established, so as the optimal solution of the model used can be updated iteratively. Once the convergence is achieved, the iterative solution approximates to the true optimal solution of the original optimal control problem, in spite of model-reality differences. For illustration, an example on a continuous stirred-tank reactor problem is studied, and the result obtained shows the applicability of the approach proposed. Hence, the efficiency of the approach proposed is highly recommended.

Highlights

  • Nonlinear optimal control problem, which is disturbed by random noises, is an interesting research topic

  • Applying the stochastic approximation scheme into the integrated optimal control and parameter estimation (IOCPE) algorithm was discussed in this paper

  • The IOCPE algorithm is for solving the discrete-time nonlinear stochastic optimal control problem, while the stochastic approximation is for the stochastic optimization

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Summary

Introduction

Nonlinear optimal control problem, which is disturbed by random noises, is an interesting research topic. In recent years, using the linear optimal control model with model-reality differences in solving the nonlinear optimal control problem, especially for discrete-time nonlinear stochastic optimal control problem, is proposed [14] [15] [16] [17] Such method is known as the integrated optimal control and parameter estimation (IOCPE) algorithm. This advantage motivates us on applying the stochastic approximation algorithm into the IOCPE algorithm can significantly reduce the output residual compared to those output residual from the Kalman filtering theory.

Problem Statement
Optimal Control with Stochastic Approximation
Necessary Optimality Conditions
Feedback Optimal Control Law
Stochastic Approximation Scheme
Computational Algorithm
Illustrative Example
Findings
Concluding Remarks
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