Erratum:
The Impact of IoT-Enabled Smart Home Systems on Energy Consumption
Year 2025,
Volume: 2 Issue: 2, 40 - 48, 22.07.2025
Ipek Unluakin
,
Azat Dündar
Şükrü Demir İnan Özer
,
Ozgun Pınarer
Erratum Note
This article has been corrected upon the request of the authors. The following changes have been made compared to the original version published in Volume 2, Issue 1:
- A text alignment issue in the second column of page 2 has been corrected.
- The name of the primary author was previously misspelled as “İpek Ünlüakin” due to a typographical error in the originally submitted manuscript. It has now been corrected to “İpek Ünlüakın.”
- The phone number provided in the original manuscript was the personal mobile number of the primary author. This has been replaced with the institutional contact number: (0212) 227 44 80.
Abstract
Smart building technologies have emerged as a key solution to improving energy efficiency in modern urban infrastructure. This study compares the energy consumption behavior of a smart office building located in Bangkok with that of a traditional university campus building in Florida. Using the SARIMAX model, we assess the influence of ambient temperature on daily energy usage. The findings indicate that smart buildings demonstrate greater resilience to temperature fluctuations, likely due to advanced control mechanisms and energy management systems. In contrast, the traditional building shows a statistically significant correlation between temperature and energy consumption. These results suggest that smart technologies can effectively mitigate the impact of environmental conditions on building energy use, contributing to more sustainable and adaptive energy systems.
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