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Analysis of Office Rooms Energy Consumption Data in Respect to Meteorological and Direct Sun Exposure Conditions

Author

Listed:
  • Adam Kula

    (Joint Doctoral School, Department of Industrial Informatics, Silesian University of Technology, 44-100 Gliwice, Poland)

  • Albert Smalcerz

    (Department of Industrial Informatics, Silesian University of Technology, 40-019 Katowice, Poland)

  • Maciej Sajkowski

    (Department of Power Electronics, Electrical Drives and Robotics, Silesian University of Technology, 44-100 Gliwice, Poland)

  • Zygmunt Kamiński

    (KAMSOFT S.A., 40-235 Katowice, Poland)

Abstract

There are many papers concerning the consumption of energy in different buildings. Most describe residential buildings, with only a few about office- or public service buildings. Few articles showcase the use of energy consumption in specific rooms of a building, directed in different geographical directions. On the other hand, many publications present methods, such as machine learning or AI, for building energy management and prediction of its consumption. These methods have limitations and represent a certain level of uncertainty. In order to compare energy consumption of different rooms, the measurements of particular building-room parameters were collected and analyzed. The obtained results showcase the effect of room location, regarding geographical directions, for the consumption of energy for heating. For south-exposed rooms, due to sun radiation, it is possible to switch heating off completely, and even overheating of 3 °C above the 22 °C temperature set point occurs. The impact of the sun radiation for rooms with a window directed east or west reached about 1 °C and lasts for a few hours before noon for the east, and until late afternoon for the west.

Suggested Citation

  • Adam Kula & Albert Smalcerz & Maciej Sajkowski & Zygmunt Kamiński, 2021. "Analysis of Office Rooms Energy Consumption Data in Respect to Meteorological and Direct Sun Exposure Conditions," Energies, MDPI, vol. 14(22), pages 1-20, November.
  • Handle: RePEc:gam:jeners:v:14:y:2021:i:22:p:7590-:d:678201
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    References listed on IDEAS

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