Pregled bibliografske jedinice broj: 5794
Identifikacija nelinearnih sustava dinamičkom neuronskom mrežom
Identifikacija nelinearnih sustava dinamičkom neuronskom mrežom, 1996., doktorska disertacija, Fakultet strojarstva i brodogradnje, Zagreb
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Naslov
Identifikacija nelinearnih sustava dinamičkom neuronskom mrežom
(Identification of nonlinear systems by dynamic neural network)
Autori
Majetić, Dubravko
Vrsta, podvrsta i kategorija rada
Ocjenski radovi, doktorska disertacija
Fakultet
Fakultet strojarstva i brodogradnje
Mjesto
Zagreb
Datum
22.02
Godina
1996
Stranica
166
Mentor
Novaković, Branko
Ključne riječi
dinamičke neuronske mreže; identifikacija dinamičkih sustava
(Dynamic neural networks; identification of nonlinear systems)
Sažetak
ABSTRACT-In this Ph.D. thesis an approach to identification of nonlinear dynamic systems with dynamic neural network is presented. An attempt to establish a nonlinear dynamic discrete-time neuron model, called Dynamic Elementary Processor (DEP) has been done. This dynamic neuron disposes of local memory, in that it has dynamic states. Based on the DEP neuron, a Dynamic Multi Layer Perceptron Neural Network is proposed. The momentum method is applied in order to accelerate the convergence of proposed extended dynamic error back propagation learning algorithm. The main advantage of proposed dynamic neuron model is that it reduces the network input space. Further it offers a great potential in solving many problems that occurs in system modelling with a special emphasis on the systems with characteristics such as nonlinearity, time delays, saturation or time-varying parameters. The proposed supervised learning algorithm is tested in prediction of an nonlinear chaotic system, known as Glass-Mackey time-series. As an another application of the proposed Dynamic Neural Network (DNN), the identification of a dynamic discrete-time nonlinear system whose measurement data are spoiled with noise is performed. DNN is also used for identification of the laboratory model of an air-heater, developed with the aim to educate students and researchers in the field of automatic control. Finally, this neural network is trained to imitate an adaptive nonlinear robot control algorithm based on inverse dynamics of the full robot model of RRTR structure. The learning results are presented in terms that are insensitive to the learning data range, and allow easy comparison with other learning algorithms, independent on machine architecture or simulator implementation.
Izvorni jezik
Hrvatski
Znanstvena područja
Strojarstvo