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An artificial intelligence method for comfort level prediction

An artificial intelligence method for comfort level prediction
An artificial intelligence method for comfort level prediction
With the rapid demand for the energy efficient consumption in buildings, bridging the gap between predicted and measured performance is essential. However, recent studies show that there is a significant mismatch between predicted and actual building performance that is widely known as Performance Gap. In some studies, it is revealed that in-use energy consumption can often be twice as much as anticipated energy consumption. Accurately predicting the energy consumption is a challenging task due to the lack of feedback from occupants’ behavior in post occupancy period. Traditional measurements are not able to simulate and predict the energy consumption precisely and so there is a need for a robust and effective method to overcome such shortcoming. This paper presents a method for predicting the level of comfort in an office building. In this investigation, a boosted regression tree as an artificial intelligence technique from computer science discipline is used to estimate the level of comfort directly from available data in order to achieve a higher accuracy in predictions, a general framework is utilized based on boosting (ensemble of regression trees) that optimizes the sum of square error loss to find the most optimal tree. Furthermore, a Regression Trees (RT) is compared to Boosted Regression Trees (BRT) to show the performance of BRT. According to the experimental results, boosted regression trees provided a powerful analysis tool, giving substantially superior predictive performance to Regression Tree.
169–177
Sajjadian, Seyed Masoud
f08f9a9d-5aee-4844-b4f9-b8f8fb454b5d
Jafari, Mina
e7463570-31ac-4bee-b30e-5831783298aa
Siebers, Peer-Olaf
233dea20-c4b8-4307-bf23-3c15124341d4
Sajjadian, Seyed Masoud
f08f9a9d-5aee-4844-b4f9-b8f8fb454b5d
Jafari, Mina
e7463570-31ac-4bee-b30e-5831783298aa
Siebers, Peer-Olaf
233dea20-c4b8-4307-bf23-3c15124341d4

Sajjadian, Seyed Masoud, Jafari, Mina and Siebers, Peer-Olaf (2018) An artificial intelligence method for comfort level prediction. In Sustainability in Energy and Buildings 2018. 169–177 . (doi:10.1007/978-3-030-04293-6_17).

Record type: Conference or Workshop Item (Paper)

Abstract

With the rapid demand for the energy efficient consumption in buildings, bridging the gap between predicted and measured performance is essential. However, recent studies show that there is a significant mismatch between predicted and actual building performance that is widely known as Performance Gap. In some studies, it is revealed that in-use energy consumption can often be twice as much as anticipated energy consumption. Accurately predicting the energy consumption is a challenging task due to the lack of feedback from occupants’ behavior in post occupancy period. Traditional measurements are not able to simulate and predict the energy consumption precisely and so there is a need for a robust and effective method to overcome such shortcoming. This paper presents a method for predicting the level of comfort in an office building. In this investigation, a boosted regression tree as an artificial intelligence technique from computer science discipline is used to estimate the level of comfort directly from available data in order to achieve a higher accuracy in predictions, a general framework is utilized based on boosting (ensemble of regression trees) that optimizes the sum of square error loss to find the most optimal tree. Furthermore, a Regression Trees (RT) is compared to Boosted Regression Trees (BRT) to show the performance of BRT. According to the experimental results, boosted regression trees provided a powerful analysis tool, giving substantially superior predictive performance to Regression Tree.

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Published date: 1 December 2018

Identifiers

Local EPrints ID: 511007
URI: http://eprints.soton.ac.uk/id/eprint/511007
PURE UUID: 78a4dd26-21a2-4fe4-9a2d-5cb760a53a3b
ORCID for Seyed Masoud Sajjadian: ORCID iD orcid.org/0000-0001-5610-0498

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Date deposited: 28 Apr 2026 17:02
Last modified: 02 May 2026 02:22

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Contributors

Author: Seyed Masoud Sajjadian ORCID iD
Author: Mina Jafari
Author: Peer-Olaf Siebers

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