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Neural dynamic optimization for control systems. I. Background

Chang-Yun Seong, Bernard Widrow

Year
2001
Citations
30

Abstract

The paper presents neural dynamic optimization (NDO) as a method of optimal feedback control for nonlinear multi-input-multi-output (MIMO) systems. The main feature of NDO is that it enables neural networks to approximate the optimal feedback solution whose existence dynamic programming (DP) justifies, thereby reducing the complexities of computation and storage problems of the classical methods such as DP. This paper mainly describes the background and motivations for the development of NDO, while the two other subsequent papers of this topic present the theory of NDO and demonstrate the method with several applications including control of autonomous vehicles and of a robot arm, respectively.

Keywords

Computer scienceComputationArtificial neural networkDynamic programmingOptimal controlControl (management)Feature (linguistics)Nonlinear systemRobotMIMO

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