Abstract
Continuous rise in energy demand with exposure in the field of smart grid creates new opportunities for energy management in both residential and commercial sector to reduce energy demand. Smart energy management system incorporates the demand response tool to shift and reduce the energy requirement. Further, this system also schedules the energy usage effectively depending on environmental parameters, load consumption profile, user priority index and energy price. Deployment of smart meters creates several opportunities to control the load profile with demand response enabling appliances. Smart energy management has the potential to reduce the carbon emissions with cost-effective energy usage involving renewable energy sources and consumer perspectives. Due to this rising interest toward smart energy management technologies, a review article based on techniques involved in energy monitoring and controlling based on consumer behavior is presented. Further, the implementation of artificial intelligence techniques and optimization approaches involved in optimal load scheduling in a residential sector are also presented.
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Yadav, M., Jamil, M., Rizwan, M. (2020). Enabling Technologies for Smart Energy Management in a Residential Sector: A Review. In: Ahmed, S., Abbas, S., Zia, H. (eds) Smart Cities—Opportunities and Challenges. Lecture Notes in Civil Engineering, vol 58. Springer, Singapore. https://doi.org/10.1007/978-981-15-2545-2_2
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DOI: https://doi.org/10.1007/978-981-15-2545-2_2
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