Improved thermal comfort modeling for smart buildings : a data analytics study
Thermal comfort is a key consideration in the design and modeling of buildings and is one of the main steps to achieving smart building control and operation. Existing solutions model thermal comfort based on factors such as indoor temperature. However, these factors are not directly controllable by...
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sg-ntu-dr.10356-1416282020-06-09T09:01:49Z Improved thermal comfort modeling for smart buildings : a data analytics study Zhang, Wei Liu, Fang Fan, Rui School of Computer Science and Engineering Engineering::Computer science and engineering Thermal Comfort Machine Learning Thermal comfort is a key consideration in the design and modeling of buildings and is one of the main steps to achieving smart building control and operation. Existing solutions model thermal comfort based on factors such as indoor temperature. However, these factors are not directly controllable by building operations, and instead are a by-product of complex interactions between controllable parameters such as air conditioning setpoint and other environmental conditions. In this paper, we use machine learning (ML) to bridge the gap between controllable building parameters and thermal comfort, by conducting an extensive study on the efficacy of different ML techniques for modeling comfort levels. We show that neural networks are especially effective, and achieve 98.7% accuracy on average. We also show these networks can lead to linear models where thermal comfort score scales linearly with the HVAC setpoint, and that the linear models can be used to quickly and accurately find the optimal setpoint for the desired comfort level. 2020-06-09T09:01:49Z 2020-06-09T09:01:49Z 2018 Journal Article Zhang, W., Liu, F., & Fan, R. (2018). Improved thermal comfort modeling for smart buildings : a data analytics study. International Journal of Electrical Power and Energy Systems, 103, 634-643. doi:10.1016/j.ijepes.2018.06.026 0142-0615 https://hdl.handle.net/10356/141628 10.1016/j.ijepes.2018.06.026 2-s2.0-85048740235 103 634 643 en International Journal of Electrical Power and Energy Systems © 2018 Elsevier Ltd. All rights reserved. |
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Engineering::Computer science and engineering Thermal Comfort Machine Learning Zhang, Wei Liu, Fang Fan, Rui Improved thermal comfort modeling for smart buildings : a data analytics study |
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Thermal comfort is a key consideration in the design and modeling of buildings and is one of the main steps to achieving smart building control and operation. Existing solutions model thermal comfort based on factors such as indoor temperature. However, these factors are not directly controllable by building operations, and instead are a by-product of complex interactions between controllable parameters such as air conditioning setpoint and other environmental conditions. In this paper, we use machine learning (ML) to bridge the gap between controllable building parameters and thermal comfort, by conducting an extensive study on the efficacy of different ML techniques for modeling comfort levels. We show that neural networks are especially effective, and achieve 98.7% accuracy on average. We also show these networks can lead to linear models where thermal comfort score scales linearly with the HVAC setpoint, and that the linear models can be used to quickly and accurately find the optimal setpoint for the desired comfort level. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Zhang, Wei Liu, Fang Fan, Rui |
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Article |
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Zhang, Wei Liu, Fang Fan, Rui |
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Zhang, Wei |
title |
Improved thermal comfort modeling for smart buildings : a data analytics study |
title_short |
Improved thermal comfort modeling for smart buildings : a data analytics study |
title_full |
Improved thermal comfort modeling for smart buildings : a data analytics study |
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Improved thermal comfort modeling for smart buildings : a data analytics study |
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Improved thermal comfort modeling for smart buildings : a data analytics study |
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improved thermal comfort modeling for smart buildings : a data analytics study |
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2020 |
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https://hdl.handle.net/10356/141628 |
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