Abstract
Hidden losses in the technological system occur accidentally due to the appearance of defects in the equipment, errone-ous actions of personnel, changes in uncontrolled external conditions. The paper considers a method of detecting and estimating hidden energy losses, based on machine learning and analysis of energy consumption precedents, aimed at eliminating such energy losses. Ref. 10. Keywords: Energy losses, technological system, machine learning, analysis of precedents.
Publisher
National Academy of Sciences of Ukraine (Co. LTD Ukrinformnauka) (Publications)
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