Title :
Field programmable gate array implementation of a neural network accelerator
Author :
Reay, D.S. ; Green, T.C. ; Williams, B.W.
Author_Institution :
Dept. of Comput. & Electr. Eng., Heriot-Watt Univ., Edinburgh, UK
Abstract :
The use of a neural network to learn the nonlinear current profiles required to minimise torque ripple in a switched reluctance motor (SRM), at low to medium speeds, has been demonstrated using a digital signal processor (DSP). However, the DSP (Texas Instruments TMS320C25) implementation of a neural network in this application is a limiting factor on motor speed (if maximum current profile integrity is to be maintained). Fortunately, the neural network architecture used (cerebellar model articular controller (CMAC)) is amenable to hardware implementation, a point noted by Albus in one of his original papers and evidenced by at least one previous field programmable gate array (FPGA) implementation. Guided by the requirements of the switched reluctance motor application, a prototype accelerator based on a Xilinx XC4000 FPGA implementation of the neural network has been constructed that operates an order of magnitude faster than the DSP implementation
Keywords :
electric machines; logic arrays; machine control; neural nets; CMAC; Xilinx XC4000 FPGA; motor speed; neural network accelerator; neural network architecture; prototype accelerator; switched reluctance motor;
Conference_Titel :
Hardware Implementation of Neural Networks and Fuzzy Logic, IEE Colloquium on
Conference_Location :
London