APPLICATION OF NEURAL NETWORK TECHNOLOGIES FOR EVALUATION OF GRANULAR SUSBSTANCE FLOW
Annotation
A method is proposed for estimation of dependence between primary measuring capacitor sensor output signal and density of grain flow based on neural network technologies. Description of the method and results of investigation are presented.
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