AUTOMATED CONTROL SYSTEM IN GREENHOUSE WITH NEURAL NETWORK PREDICTIONS OF EXTERNAL DISTURBANCES
Abstract
Efficiency of creation automation control system in a greenhouse with using solar radiation intensity and temperature predictions by neural networks is shown.References
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