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The reinforcement learning method : A feasible and sustainable control strategy for efficient occupant-centred building operation in smart cities

May, Ross (author)
Högskolan Dalarna,Mikrodataanalys
Carling, Kenneth, 1967- (thesis advisor)
Högskolan Dalarna,Mikrodataanalys
Han, Mengjie, 1985- (thesis advisor)
Högskolan Dalarna,Mikrodataanalys
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Rebreyend, Pascal (thesis advisor)
Högskolan Dalarna,Datateknik
Nagy, Zoltan, Assistant Professor, 1985- (opponent)
The University of Texas at Austin
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 (creator_code:org_t)
ISBN 9789188679031
Borlänge : Dalarna University, 2019
English.
Series: Dalarna Licentiate Theses ; 12
  • Licentiate thesis (other academic/artistic)
Abstract Subject headings
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  • Over half of the world’s population lives in urban areas, a trend which is expected to only grow as we move further into the future. With this increasing trend in urbanisation, challenges are presented in the form of the management of urban infrastructure systems. As an essential infrastructure of any city, the energy system presents itself as one of the biggest challenges. As cities expand in population and economically, global energy consumption increases and as a result so do greenhouse gas (GHG) emissions. To achieve the 2030 Agenda’s sustainable development goal on energy (SDG 7), renewable energy and energy efficiency have been shown as key strategies for attaining SDG 7. As the largest contributor to climate change, the building sector is responsible for more than half of the global final energy consumption and GHG emissions. As people spend most of their time indoors, the demand for energy is made worse as a result of maintaining the comfort level of the indoor environment. However, the emergence of the smart city and the internet of things (IoT) offers the opportunity for the smart management of buildings. Focusing on the latter strategy towards attaining SDG 7, intelligent building control offers significant potential for saving energy while respecting occupant comfort (OC). Most intelligent control strategies, however, rely on complex mathematical models which require a great deal of expertise to construct thereby costing in time and money. Furthermore, if these are inaccurate then energy is wasted and the comfort of occupants is decreased. Moreover, any change in the physical environment such as retrofits result in obsolete models which must be re-identified to match the new state of the environment. This model-based approach seems unsustainable and so a new model-free alternative is proposed. One such alternative is the reinforcement learning (RL) method. This method provides a beautiful solution to accomplishing the tradeoff between energy efficiency and OC within the smart city and more importantly to achieving SDG 7. To address the feasibility of RL as a sustainable control strategy for efficient occupant-centred building operation, a comprehensive review of RL for controlling OC in buildings as well as a case study implementing RL for improving OC via a window system are presented. The outcomes of each seem to suggest RL as a feasible solution, however, more work is required in the form of addressing current open issues such as cooperative multi-agent RL (MARL) needed for multi-occupant/multi-zonal buildings.

Subject headings

TEKNIK OCH TEKNOLOGIER  -- Samhällsbyggnadsteknik -- Husbyggnad (hsv//swe)
ENGINEERING AND TECHNOLOGY  -- Civil Engineering -- Building Technologies (hsv//eng)
NATURVETENSKAP  -- Data- och informationsvetenskap (hsv//swe)
NATURAL SCIENCES  -- Computer and Information Sciences (hsv//eng)

Keyword

Markov decision processes
Reinforcement learning
Control
Building
Indoor comfort
Occupant
Complex Systems – Microdata Analysis
Komplexa system - mikrodataanalys

Publication and Content Type

vet (subject category)
lic (subject category)

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