2022
DOI: 10.1088/1755-1315/1084/1/012005
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Comparison of multi linear regression and artificial neural network to predict the energy consumption of residential buildings

Abstract: The building sector along with its sub-sectors is the world’s leading consumer of all forms of energy and consumes about 30% of the world’s final energy consumption. With the increase in population, industrialization and urbanization trend, the energy sector has grown rapidly in the past decades to cater to the increase in energy demand. To cater this, many regulatory efforts in the form of energy efficiency and conservation codes offering guidelines and measures during and post design have been proposed in di… Show more

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Cited by 3 publications
(2 citation statements)
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References 16 publications
(15 reference statements)
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“…No decisive conclusion was reached on the most suitable model. Nainwal et al [81] compared results using a multilinear regression (MLR) algorithm and ANN for predicting energy consumption in residential buildings. Consumption data from six dwelling units were used to train and test the algorithms and the results showed that the ANN performed better than the MLR.…”
Section: For Energy Management and Energy Consumption Predictionmentioning
confidence: 99%
“…No decisive conclusion was reached on the most suitable model. Nainwal et al [81] compared results using a multilinear regression (MLR) algorithm and ANN for predicting energy consumption in residential buildings. Consumption data from six dwelling units were used to train and test the algorithms and the results showed that the ANN performed better than the MLR.…”
Section: For Energy Management and Energy Consumption Predictionmentioning
confidence: 99%
“…There are various studies reviewed for understanding the development and working of an ANN model. The energy consumption of 6 residential buildings was predicted in [11] using ANN and compared with that using multilinear regression. The ANN results were more accurate than regression with the variation range of -0.302% to +1.752% in ANN and -2.112% to +2.448% in later.…”
Section: Introductionmentioning
confidence: 99%