Energy management strategy based on short-term resource scheduling of a renewable energy-based microgrid in the presence of electric vehicles using θ-modified krill herd algorithm

Providing of energy is one of the most important issues for each country. Also, environmental issues due to fossil fuel depletion are other serious concern of them. In this regard, moving toward energy sustainability is a constructive solution for each country. This paper studies the short-term plan...

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Veröffentlicht in:Neural computing & applications 2021-08, Vol.33 (16), p.10005-10020
Hauptverfasser: Aldosary, Abdallah, Rawa, Muhyaddin, Ali, Ziad M., latifi, Mohsen, Razmjoo, Armin, Rezvani, Alireza
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container_end_page 10020
container_issue 16
container_start_page 10005
container_title Neural computing & applications
container_volume 33
creator Aldosary, Abdallah
Rawa, Muhyaddin
Ali, Ziad M.
latifi, Mohsen
Razmjoo, Armin
Rezvani, Alireza
description Providing of energy is one of the most important issues for each country. Also, environmental issues due to fossil fuel depletion are other serious concern of them. In this regard, moving toward energy sustainability is a constructive solution for each country. This paper studies the short-term planning of generating units in renewable energy-based distribution networks equipped with plug-in electric vehicles (PEVs). PEVs can cause problems for distributed energy sources in the electrical grid, as well as power units inside the grid. So, to overcome this problem, an efficient stochastic programming technique is designed to allow the control entity to control the charging behavior of PEVs for managing power units. In this paper, to obtain the least total cost, a new method is suggested to decrease the reliability expenses. In other words, the vehicle-2-grid (V2G) is applied to decrease the operating. On the other hand, a novel stochastic flow using the unscented transform is suggested to improve the model of the severe uncertainty due to the wind power, photovoltaic (PV) and charging/discharging power of PEVs. In this research work, a novel and efficient optimization algorithm called ‘θ-modified krill herd (θ-MKH)” is used as an applicable technique to optimize the microgrid (MG) operation. This algorithm is useful and has many advantages like the runaway from the local optima with fast converging in comparison with other methods. Also, the satisfactory efficiency of the suggested randomized manner is validated on an MG connected to the main grid.
doi_str_mv 10.1007/s00521-021-05768-3
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subjects Algorithms
Alternative energy sources
Artificial Intelligence
Charging
Computational Biology/Bioinformatics
Computational Science and Engineering
Computer Science
Data Mining and Knowledge Discovery
Depletion
Distributed generation
Electric vehicles
Energy distribution
Energy management
Fossil fuels
Image Processing and Computer Vision
Krill
Optimization
Original Article
Photovoltaic cells
Probability and Statistics in Computer Science
Renewable energy
Renewable resources
Resource scheduling
Stochastic programming
Wind power
title Energy management strategy based on short-term resource scheduling of a renewable energy-based microgrid in the presence of electric vehicles using θ-modified krill herd algorithm
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