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Affect-aware intelligent thermal comfort environments

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dc.contributor.author KIZITO N, Nkurikiyeyezu
dc.date.accessioned 2020-09-17T09:56:05Z
dc.date.available 2020-09-17T09:56:05Z
dc.date.issued 2020-02-15
dc.identifier.uri http://hdl.handle.net/123456789/1143
dc.description Doctoral Thesis en_US
dc.description.abstract Despite almost a century of research on thermal comfort, its provision is still based on fundamentallyflawedassumptions, achievesalacklusterperformance, and requires excessive energy to operate. Indeed,the leading thermal comfort model—the PMV model—is inaccurate because it was inferred from highly controlled experiments; thus, it is oblivious of important real life factors that influence thermal comfort. The successor to the PMV model—the adaptation model—has assumptions that are at odds with social norms and business etiquette. Furthermore,the adaptation model has very permissive comfort zones to the extent that it may lead to thermal discomfort because winter cold waves, long hot summers and heatwaves push the adaptation model beyond humans’physiological adaptations limits. Finally,while existing personalized approaches allow the users to manually set their thermal preferences,hand-operated control leads to reboundandovershoot. Consequently,it is often suggested that an optimum personalized thermal comfort approach needs to automatically estimate and provide thermal comfort with little or no user interaction. This thesis proposes a novel energy-efficient technique that provides a personalized thermal comfort based on the fluctuations in people’s heartbeats. Indeed, humans have thermo-regulation processes that maintain their core temperature at a specific constant. Thermo-regulation involves massive changes in blood circulation.For instance, in hot conditions, blood circulation to the skin significantly increases in order to enhance heat dissipation through the skin. Conversely,in cold environments, blood circulation is restricted in order to reduce heat dissipation. As a result, this thesis hypothesizes that heartrate variability(HRV)would be an accurate and genuine indicator of thermal comfort. The proposed approach has two main advantages. First, unlike existing personalized approaches—which are manually controlled or depend on predetermine settings—the proposed approach is self-adaptive. It uses the estimated thermal comfort and creates a duplex communication between the persona lthermal comfort actuators(e.g.,airconditioning units, chair warmers, and a neck cooler) and its users in order to provide a real-timethermal comfort that reflects each individual’s therma lexpectations. Secondly, a few parts of the body (e.g.,head,wrists,and feet) are mostly responsible for one’s over Iall thermal comfort.That being so, the proposed approach—unlike e.g.,airconditioning units that cool or warm an entire room, including its walls and furniture, and regardless of the number of people present—would be energy-efficient because it makes it possible to create a microclimate thermal comfortzone around a person and to channel the comfort only to the parts of the body that are most sensitive to thermal comfort. The research conducted in this thesis confirms these hypotheses. In summary,it was observed that in door thermal conditions influence people’s heartrate variability and that it is possible to reliably (with an accuracy >95%) predict the subjects’thermal comfort. These results led to the development of a prototype of a thermal comfort provision system that infers an individual’s thermal comfort from a photoplethysmogram (PPG) signal recorded on a wrist.Nevertheless,because thermal comfort is expressed differently from one person to another,the proposed approach would only work if person-specif machine learning models were developed for each user of the system. Such limitations would be confining and costly for a large scale deployment. Consequently, an algorithm that mitigates these limitations was developed. The thesis also investigates the interplay between thermal comfort and stress and concludes with the suggestion that, although both thermal comfort and stress affect a person’s HRV,thermal comfort and stress have different etiologies and physiological responses. Ergo, their effect on a person’s HRV is perhaps non-overlapping and that the two can be distinguished by,e.g.,a machine learning model. Finally,the thesis coins the concept of “affect-aware thermal comfort” as a complementary to the existing thermal comfort provision methods. An affect-aware system would estimate in real-time the affects (e.g.,thermal comfort, stress, and emotion) of its users and automatically adjusts itself in order to satisfy their implicit and explicit needs (in terms of, e.g., thermal comfort, ventilation, well-being, and productivity) and in a sustainable way (in terms of e.g., heating, ventilation and cooling efficiency, and lighting). en_US
dc.language.iso en en_US
dc.publisher Aoyama Gakuin University, Japan en_US
dc.subject Thermal comfort provision,Static thermal comfort models,Thermal adaptation models en_US
dc.title Affect-aware intelligent thermal comfort environments en_US
dc.type Thesis en_US


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