Established in 2005 under support of MŠMT ČR (project 1M0572)

Publications

Neural network based bicriterial dual control with multiple linearization

Typ:
Conference paper
Proceedings name:
Proceedings of the IFAC Workshop Adaptation and Learning in Control and Signal Processing 2010
Serie:
Antalya, Turkey
Year:
2010
Keywords:
neural networks, intelligent control, adaptive control
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Anotation:
A suboptimal dual controller for discrete nonlinear stochastic systems based on the bicriterial approach is proposed and discussed. Two individual criteria are designed and used to introduce one of the con°icting e®orts between estimation and control; caution and probing. A nonlinear system is modeled using a neural network (NN) of perceptron type. The unknown parameters of the network are estimated by a global estimation method, the Gaussian sum method (GSM), which allows to determine conditional probability density function (pdf) of the NNs parameters. The GSM in association with an idea of multiple linearization is chosen and utilized in the bicriterial dual control (BDC) approach. The probing component of the control law is determined for each local mode of estimated pdf separately and respects accuracy of each local estimate inherent in the estimated pdf. A comparison of the proposed modi—ed BDC and the BDC which uses a global point estimate only is shown in a numerical example.
 
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