DocumentCode :
3678880
Title :
Repetitive neurocontroller with disturbance dual feedforward — Choosing the right dynamic optimization algorithm
Author :
Bartlomiej Ufnalski;Lech M. Grzesiak
Author_Institution :
WARSAW UNIVERSITY OF TECHNOLOGY, Institute of Control and Industrial Electronics, 75 Koszykowa St., Warsaw 00-662, Poland
fYear :
2015
Firstpage :
1
Lastpage :
10
Abstract :
The paper presents a recently developed repetitive neurocontroller (RNC) that does not require additional filtering and/or forgetting to robustify it, i.e. to circumvent the long horizon stability issue present in the classic iterative learning control (ILC) scheme. Initially, the Levenberg-Marquardt (L-M) error backpropagation (BP) algorithm was used as a DOP(dynamic optimization problem)-capable search mechanism. At that time the choice of the training algorithm was made based on the frequently reported effectiveness of the L-M method in static optimization problems. However, there is an abundance of neural network training methods characterized, e.g., by different convergence rates, computational burden, noise sensitivity, etc. The performance of a particular optimization method is always problem specific. The case study of a constant-amplitude constant-frequency (CACF) voltage-source inverter (VSI) with an LC output filter is analysed here and some recommendations regarding the trade-off between convergence rate and computational complexity are made. The robustness to a measurement noise is also tested. The comparison is based on the results of numerical experiments. A couple of algorithms is then suggested for real-time implementation.
Keywords :
"Feedforward neural networks","Neurons","Neurocontrollers","Heuristic algorithms","Optimization","Training","Voltage measurement"
Publisher :
ieee
Conference_Titel :
Power Electronics and Applications (EPE´15 ECCE-Europe), 2015 17th European Conference on
Type :
conf
DOI :
10.1109/EPE.2015.7309263
Filename :
7309263
Link To Document :
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