Affiliation:
1. Sivanthi Aditanar College of Engineering,Tamilnadu,India
Abstract
Buildings consume nearly one-third of global energy and are responsible for
one-fourth of CO2
emissions, thereby playing a crucial role in polluting the earth. Cities
are more vulnerable as there are more buildings and a huge population due to
employment opportunities. Hence, there is a need for the transformation of cities into
smart cities with viable environments by making buildings smart. Smart cities with
energy-efficient buildings can improve the economy and reduce pollution effects,
thereby improving the quality of city life. As human errors and carelessness jeopardise
energy conservation and eco-friendly initiatives in traditional buildings, automatic
internet of things (IOT) monitored building control, also known as a smart building, is
a need of the hour if the world is to advance toward smart cities. The management of
the cities should estimate their energy consumption in advance and plan strategies that
will help in reducing the energy consumption of both commercial and residential
buildings towards creating a pollution-free smart city. The IOT sensors produce
continuous streaming data, which necessitates big data analysis to improve the
performance of building in terms of energy consumption. Big data analysis based on
machine learning techniques is currently being employed for such an automatic
analysis and management of buildings based on IOT sensor data. This chapter focuses
on bringing out the commercially available IOT sensors for collecting building data,
their efficiencies, extracted features and the commonly used machine learning
techniques, their strengths, and drawbacks and also identifies the research gap and
work to be done for further improving big data analysis of smart energy management.
Publisher
BENTHAM SCIENCE PUBLISHERS
Reference39 articles.
1. Chrysi K. Metallidou; Kostas E. Psannis; Eugenia Alexandropoulou Egyptiadou; Energy Efficiency in Smart Buildings: IoT Approaches. Special Section on Future Generation Smart Cities Research: Services, Applications, Case Studies and Policymaking Considerations for Well-Being [Part II], IEEE Access2020
2. Djenouri D.; Laidi R.; Djenouri Y.; Balasingham I.; Machine Learning for Smart Building Applications: Review and Taxonomy. ACM Comput Surv 2018,1(1)
3. Qolomany B.; Al-Fuqaha A.; Gupta A.; Benhaddou D.; Alwajidi S.; Qadir J.; Fong A.C.; Leveraging Machine Learning and Big Data for Smart Buildings: A Comprehensive Survey. IEEE Access 2019,7,90316-90356
4. Manic M.; Wijayasekara D.; Amarasinghe K.; Rodriguez-Andina J.J.; Building energy management systems: The age of intelligent and adaptive buildings. IEEE Ind Electron Mag 2016,10(1),25-39
5. Pan J.; Jain R.; Paul S.; Vu T.; Saifullah A.; Sha M.; An Internet of Things framework for smart energy in buildings: Designs, prototype, and experiments. IEEE Internet Things J 2015,2(6),527-537