Title :
Accelerator diagnosis and control by neutral nets
Author_Institution :
Linear Accel. Center, Stanford Univ., CA, USA
Abstract :
It is suggested that neural nets (NN) provide a good metaphor for large complex systems (LCSs). It can be argued that NNs are logically equivalent to multiloop feedback-forward control of faulty systems and therefore provide an ideal adaptive control system. Thus, while AI (artificial intelligence) may be appropriate for maintaining a golden orbit, NNs should be appropriate for obtaining it via a quantitative approach to look and adjust methods (such as operator tweaking) which use pattern recognition to address hardware and software limitations, inaccuracies, errors, and imprecise knowledge or understanding of effects such as annealing and hysteresis. Insights from NNs allow one to define feasibility conditions for LCSs in terms of design constraints and tolerances. Hardware and software implications are discussed and several LCSs of current interest are compared and contrasted
Keywords :
artificial intelligence; neural nets; particle accelerator accessories; particle beam diagnostics; physics computing; AI; adaptive control system; annealing; artificial intelligence; faulty systems; golden orbit; hardware; hysteresis; large complex systems; multiloop feedback-forward control; neutral nets; operator tweaking; pattern recognition; software; Adaptive control; Annealing; Artificial intelligence; Artificial neural networks; Control systems; Hardware; Hysteresis; Neural networks; Pattern recognition; Software maintenance;
Conference_Titel :
Particle Accelerator Conference, 1989. Accelerator Science and Technology., Proceedings of the 1989 IEEE
Conference_Location :
Chicago, IL
DOI :
10.1109/PAC.1989.72880