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Im, Haekyung and Srinivasan, Ravi S. and Maxwell, Daniel and Steiner, Ruth L. and Karmakar, Sayar The Impact of Climate Change on a University Campus’ Energy Use: Use of Machine Learning and Building Characteristics. Journals Buildings Volume 12 Issue 2, Building Energy and Environment, 12 (2).

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12/2/108 - Published Version

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Official URL: https://www.mdpi.com/2075-5309/12/2/108

Abstract

Global warming is expected to increase 1.5 °C between 2030 and 2052. This may lead to an increase in building energy consumption. With the changing climate, university campuses need to prepare to mitigate risks with building energy forecasting models. Although many scholars have developed buildings energy models (BEMs), only a few have focused on the interpretation of the meaning of BEM, including climate change and its impacts. Additionally, despite several review papers on BEMs, there is no comprehensive guideline indicating which variables are appropriate to use to explain building energy consumption. This study developed building energy prediction models by using statistical analysis: multivariate regression models, multiple linear regression (MLR) models, and relative importance analysis. The outputs are electricity (ELC) and steam (STM) consumption. The independent variables used as inputs are building characteristics, temporal variables, and meteorological variables. Results showed that categorizing the campus buildings by building type is critical, and the equipment power density is the most important factor for ELC consumption, while the heating degree is the most critical factor for STM consumption. The laboratory building type is the most STM-consumed building type, so it needs to be monitored closely. The prediction models give an insight into which building factors remain essential and applicable to campus building policy and campus action plans. Increasing STM is to raise awareness of the severity of climate change through future weather scenarios.

Item Type: Article
Uncontrolled Keywords: building energy modelling; regression analysis; machine learning; climate change; university campus; energy consumption prediction
Subjects: English > Climate Change Adaptation
Depositing User: Susanna Carlsten
Date Deposited: 02 Jun 2022 05:37
Last Modified: 02 Jun 2022 05:41
URI: http://eprints.sparaochbevara.se/id/eprint/1205

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