Machine Learning for Smart and Energy-Efficient Buildings

Author:

Das Hari PrasannaORCID,Lin Yu-Wen,Agwan Utkarsha,Spangher Lucas,Devonport Alex,Yang Yu,Drgoňa Ján,Chong Adrian,Schiavon Stefano,Spanos Costas J.

Abstract

Abstract Energy consumption in buildings, both residential and commercial, accounts for approximately 40% of all energy usage in the United States, and similar numbers are being reported from countries around the world. This significant amount of energy is used to maintain a comfortable, secure, and productive environment for the occupants. So, it is crucial that energy consumption in buildings must be optimized, all the while maintaining satisfactory levels of occupant comfort, health, and safety. Machine learning (ML) has been proven to be an invaluable tool in deriving important insights from data and optimizing various systems. In this work, we review some of the most promising ways in which ML has been leveraged to make buildings smart and energy-efficient. For the convenience of readers, we provide a brief introduction to the relevant ML paradigms and the components and functioning of each smart building system we cover. Finally, we discuss the challenges faced while implementing machine learning algorithms in smart buildings and provide future avenues for research in this field.

Publisher

Cambridge University Press (CUP)

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