Comparison of Neural Networks Based Direct Inverse Control Systems for a Double Propeller Boat Model
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Date
2016-12Author
Priandana, Karlisa
Wahab, Wahidin
Kusumoputro, Benyamin
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Show full item recordAbstract
This paper presents the thorough evaluation and analysis on the
direct inverse neural networks based controller systems for a
double-propeller boat model. Two direct inverse controller
systems that were designed with and without feedback were
implemented on a double propeller boat model using two neural
networks based control approaches, namely the back-propagation
based neural controller (BPNN-controller) and the selforganizing
maps based neural controller (SOM-controller). Then,
the resulted control errors of the systems were compared.
Simulation results revealed that the direct inverse control without
feedback produced lower error compared to the direct inverse
control with feedback. Another important finding from the study
was that the SOM-controller is superior to the BPNN-controller
in terms of control error and training computational cost
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- Computer Science [72]