FIELD: physics, computation hardware.
SUBSTANCE: invention relates to ACS and computer technology and can be used for control and technical diagnostics of complex processing equipment, including, machine tools and flexible production systems. Claimed device comprises transducers, computer system and device of diagnostics signal display device. Computer system comprises module configured for intellectual analysis and dynamic model built around trained neuron net and module configured for additional raining of neuron net and selection of active and excess neurons.
EFFECT: automatic selection of important parameters of multiple input and output parameters owing to additional training of neuron in operation and increase-decrease number of active neurons and owing to selection of excess neurons and their activation at training or at failure of net neurons.
5 cl, 5 dwg
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Authors
Dates
2015-09-20—Published
2013-07-18—Filed