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Update of specific electric loads of public premises located in residential buildings

https://doi.org/10.30724/1998-9903-2021-23-3-47-57

Abstract

THE PURPOSE. To determine the composition of electricity consumers in apartment buildings. To analyze the power consumption of organizations located on the first two floors of apartment buildings. To justify the need to update the standards for electrical loads for public premises built into residential buildings. METHODS. Information on electricity consumption was received by automated electricity metering system from smart meters installed directly at consumers. To achieve this goal, statistical methods for analyzing energy consumption were used. RESULTS. The article describes the relevance of the topic, provides a rationale for adjusting the normative values of specific electrical loads for public premises built into residential buildings. The percentage of consumer groups is shown on the example of several apartment buildings. The annual specific average monthly graphs of electricity consumption are presented: shops, offices, pharmacies, restaurants. CONCLUSION. In an effort to increase the level of comfort, developers are interested in developing the infrastructure of the facilities, mainly for this, they use ground and first floors, in which retail and office areas are most often located. Research by the Roselectromontazh Association has shown that to determine the electrical load of non-residential commercial premises, one has to use one averaged value due to the constant change in the purpose of premises and the complexity of determining the occupied area.

About the Authors

Yu. I. Soluyanov
Kazan State Power Engineering University; Association «Roselectromontazh»; JSC «Tatelektromontazh»
Russian Federation

Yuri I. Soluyanov

Kazan



A. R. Akhmetshin
Kazan State Power Engineering University; Association «Roselectromontazh»
Russian Federation

Azat R. Akhmetshin

Kazan



V. I. Soluyanov
Kazan State Power Engineering University; JSC «Tatelektromontazh»
Russian Federation

Vladimer I. Soluyanov

Kazan

 



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Review

For citations:


Soluyanov Yu.I., Akhmetshin A.R., Soluyanov V.I. Update of specific electric loads of public premises located in residential buildings. Power engineering: research, equipment, technology. 2021;23(3):47-57. (In Russ.) https://doi.org/10.30724/1998-9903-2021-23-3-47-57

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ISSN 1998-9903 (Print)
ISSN 2658-5456 (Online)