DocumentCode :
2901156
Title :
Gain scheduled neural network tuned pi feedback control system for the lansce accelerator
Author :
Kwon, Sungil ; Davis, J. ; Lynch, M. ; Prokop, M. ; Ruggles, S. ; Torrez, P.
Author_Institution :
LANL, Los Alamos
fYear :
2007
fDate :
25-29 June 2007
Firstpage :
2379
Lastpage :
2381
Abstract :
The current LANSCE LLRF system is an analog PI Feedback control system which achieves the amplitude and phase error within 1% and 1 degree. The feedback system receives the cavity amplitude and phase and the crosstalk between the amplitude and the phase paths is significant. We propose an In-phase (I) and Quadrature (Q) based feedback control system which easily decouples the crosstalk of I and Q channels. A gain scheduled PI feedback controller with optimally generated set point trajectory reduces the transient peak of the feedback controller and hence reduce the fatigue of the RF amplifier chain. An additional feature of the controller is the Neural network based self-tuning PI feedback, where the neural network tunes the feedback gains to minimize the errors in the least squares sense. The proposed control system is implemented with Altera Stratix II FPGA. The control system is modeled with DSP Builder and automatically generates HDL. Altera SOPC Builder is used for the hardware integration of the DSP Builder model, memories, peripherals, and 32 bit NIOS II embedded processor. NIOS II processor equipped with real time operating system communicates with the host computer via Ethernet, uploads data, computes parameters, and downloads parameters. The proposed control system is tested with the low power test-stand for the robustness of the algorithm.
Keywords :
PI control; accelerator RF systems; accelerator cavities; accelerator control systems; linear accelerators; neural nets; Altera SOPC builder; Altera Stratix II FPGA; DSP builder model; LANSCE accelerator; RF amplifier; analog PI feedback control system; gain scheduled PI feedback controller; in-phase based feedback control system; linear accelerator controller systems; neural network based self-tuning PI feedback; proportional-integral controllers; quadrature based feedback control system; Acceleration; Adaptive control; Automatic control; Control systems; Crosstalk; Digital signal processing; Error correction; Feedback control; Neural networks; Neurofeedback;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Particle Accelerator Conference, 2007. PAC. IEEE
Conference_Location :
Albuquerque, NM
Print_ISBN :
978-1-4244-0916-7
Type :
conf
DOI :
10.1109/PAC.2007.4441256
Filename :
4441256
Link To Document :
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