Uncertainty-Compensating Neural Network Control for Nonlinear Systems

비선형 시스템의 불확실성을 보상하는 신경회로망 제어

  • 조현섭 (청운대학교 디지털방송공학과) ;
  • 오명관 (혜전대학 디지털서비스과)
  • Published : 2008.05.22

Abstract

We consider the problem of constructing observers for nonlinear systems with unknown inputs. Connectionist networks, also called neural networks, have been broadly applied to solve many different problems since McCulloch and Pitts had shown mathematically their information processing ability in 1943. In this thesis, we present a genetic neuro-control scheme for nonlinear systems. Our method is different from those using supervised learning algorithms, such as the backpropagation (BP) algorithm, that needs training information in each step. The contributions of this thesis are the new approach to constructing neural network architecture and its training.

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