Title :
TSK-type recurrent fuzzy network for dsp-based permanent-magnet linear synchronous motor servo drive
fDate :
11/1/2006 12:00:00 AM
Abstract :
A TSK-type recurrent fuzzy network (TSKRFN) control system is proposed to control the position of the mover of a field-oriented control permanent-magnet linear synchronous motor (PMLSM) servo drive system to track periodic reference trajectories in this study. The proposed TSKRFN combines the merits of self-constructing fuzzy neural network (SCFNN), TSK-type fuzzy inference mechanism, and recurrent neural network (RNN). Moreover, the structure and the parameter learning phases are preformed concurrently and online in the TSKRFN. The structure learning is based on the partition of input space, and the parameter learning is based on the supervised gradient-descent method using a delta adaptation law. Furthermore, all the control algorithms are implemented in a TMS320C32 DSP-based control computer. The simulated and experimental results due to periodic reference trajectories show that the dynamic behaviour of the proposed TSKRFN control system is robust with regard to uncertainties
Keywords :
control engineering computing; digital signal processing chips; electric machine analysis computing; fuzzy neural nets; gradient methods; inference mechanisms; linear motors; machine vector control; permanent magnet motors; recurrent neural nets; robust control; servomotors; synchronous motor drives; DSP-based permanent-magnet linear synchronous motor; TMS320C32 DSP-based control computer; TSK-recurrent fuzzy network control; field-oriented control; fuzzy inference mechanism; position control; robust control; self-constructing fuzzy neural networks; servodrive system; supervised gradient-descent method;
Journal_Title :
Electric Power Applications, IEE Proceedings -
DOI :
10.1049/ip-epa:20060148