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Growing Science » International Journal of Industrial Engineering Computations » An explicit evolutionary approach for multiobjective energy consumption planning considering user preferences in smart homes

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International Journal of Industrial Engineering Computations

ISSN 1923-2934 (Online) - ISSN 1923-2926 (Print)
Quarterly Publication
Volume 12 Issue 4 pp. 365-380 , 2021

An explicit evolutionary approach for multiobjective energy consumption planning considering user preferences in smart homes Pages 365-380 Right click to download the paper Download PDF

Authors: Sergio Nesmachnow, Diego Gabriel Rossit, Jamal Toutouh, Francisco Luna

DOI: 10.5267/j.ijiec.2021.5.005

Keywords: Smart cities, Energy consumption planning problem, User preferences, Multiobjective optimization, Evolutionary algorithm, Greedy algorithms

Abstract: Modern Smart Cities are highly dependent on an efficient energy service since electricity is used in an increasing number of urban activities. In this regard, Time-of-Use prices for electricity is a widely implemented policy that has been successful to balance electricity consumption along the day and, thus, diminish the stress and risk of shortcuts of electric grids in peak hours. Indeed, residential customers may now schedule the use of deferrable electrical appliances in their smart homes in off-peak hours to reduce the electricity bill. In this context, this work aims to develop an automatic planning tool that accounts for minimizing the electricity costs and enhancing user satisfaction, allowing them to make more efficient usage of the energy consumed. The household energy consumption planning problem is addressed with a multiobjective evolutionary algorithm, for which problem-specific operators are devised, and a set of state-of-the-art greedy algorithms aim to optimize different criteria. The proposed resolution algorithms are tested over a set of realistic instances built using real-world energy consumption data, Time-of-Use prices from an electricity company, and user preferences estimated from historical information and sensor data. The results show that the evolutionary algorithm is able to improve upon the greedy algorithms both in terms of the electricity costs and user satisfaction and largely outperforms to a large extent the current strategy without planning implemented by users.

How to cite this paper
Nesmachnow, S., Rossit, D., Toutouh, J & Luna, F. (2021). An explicit evolutionary approach for multiobjective energy consumption planning considering user preferences in smart homes.International Journal of Industrial Engineering Computations , 12(4), 365-380.

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Journal: International Journal of Industrial Engineering Computations | Year: 2021 | Volume: 12 | Issue: 4 | Views: 1250 | Reviews: 0

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