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A theoretical adaptive model of thermal comfort – Adaptive Predicted Mean Vote (aPMV)

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Yao, R. orcid id iconORCID: https://orcid.org/0000-0003-4269-7224, Li, B. and Liu, J. (2009) A theoretical adaptive model of thermal comfort – Adaptive Predicted Mean Vote (aPMV). Building and Environment, 44 (10). pp. 2089-2096. ISSN 0360-1323 doi: 10.1016/j.buildenv.2009.02.014

Abstract/Summary

This paper presents in detail a theoretical adaptive model of thermal comfort based on the “Black Box” theory, taking into account factors such as culture, climate, social, psychological and behavioural adaptations, which have an impact on the senses used to detect thermal comfort. The model is called the Adaptive Predicted Mean Vote (aPMV) model. The aPMV model explains, by applying the cybernetics concept, the phenomena that the Predicted Mean Vote (PMV) is greater than the Actual Mean Vote (AMV) in free-running buildings, which has been revealed by many researchers in field studies. An Adaptive coefficient (λ) representing the adaptive factors that affect the sense of thermal comfort has been proposed. The empirical coefficients in warm and cool conditions for the Chongqing area in China have been derived by applying the least square method to the monitored onsite environmental data and the thermal comfort survey results.

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Item Type Article
URI https://reading-clone.eprints-hosting.org/id/eprint/12475
Item Type Article
Refereed Yes
Divisions Science > School of the Built Environment > Energy and Environmental Engineering group
Uncontrolled Keywords Thermal comfort, Thermal environment, Adaptive Predicted Mean Vote (aPMV), Predicted Mean Vote (PMV), Actual Mean Vote (AMV), Adaptive coefficient λ
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