%0 Journal Article %T Adaptive Neuro-Controller Based on Hybrid Multi Layered Perceptron Network for Dynamic Systems %J International Journal of Control Science and Engineering %@ 2168-4960 %D 2012 %I %R 10.5923/j.control.20120203.03 %X In this paper, an intelligent controller namely Adaptive Neuro-controller (ANC) based on Hybrid Multi Layered Perceptron (HMLP) network has been developed for dynamic systems. The performance of ANC has been compared with the ANC based on Multi Layered Perceptron (MLP) network and Adaptive Parametric Black Box (APBB) Controller. The comparison are based on the time response and the capability of the controlled output to track the model reference output. All controllers are based on a black box approach that offers simpler design approach. The Model Reference Adaptive System (MRAS) has been used to generate the desired output path and to ensure the output of the controlled system follows the output of the reference model. Weighted Recursive Least Square (WRLS) algorithm has been used to adjust the controller parameters in order to minimize the error between the plant output and the model reference output. The controllers have been tested using a linear plant and a nonlinear plant with several varying operating conditions such as varying gain, noise and disturbance. Based on the simulation results and performance analysis for all controllers, it is observed that ANC based on HMLP network is controllable and more stable than ANC based on MLP network and APBB controller. It is also can be signify that the ANC based on HMLP network is sufficient to control the plants with unpredictable conditions. %K Adaptive Neuro-controller %K Hybrid Multi Layered Perceptron Network %K Multi Layered Perceptron Network %K Adaptive Parametric Black Box %K Model Reference Adaptive System %K Weighted Recursive Least Square %U http://article.sapub.org/10.5923.j.control.20120203.03.html