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Energy Management Scheduling for Microgrids in the Virtual Power Plant System Using Artificial Neural Networks
by
Hussain, S. M. Suhail
, Ustun, Taha Selim
, Sarker, Mahidur R.
, Ker, Pin Jern
, G. M. Abdolrasol, Maher
, Hannan, Mahammad Abdul
in
artificial neural network
/ Cost reduction
/ Electricity
/ Electricity distribution
/ Energy management
/ Industrial plant emissions
/ multi-microgrids
/ Neural networks
/ Optimization algorithms
/ Optimization techniques
/ Power plants
/ Scheduling
/ Supplies
/ virtual power plant
2021
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Energy Management Scheduling for Microgrids in the Virtual Power Plant System Using Artificial Neural Networks
by
Hussain, S. M. Suhail
, Ustun, Taha Selim
, Sarker, Mahidur R.
, Ker, Pin Jern
, G. M. Abdolrasol, Maher
, Hannan, Mahammad Abdul
in
artificial neural network
/ Cost reduction
/ Electricity
/ Electricity distribution
/ Energy management
/ Industrial plant emissions
/ multi-microgrids
/ Neural networks
/ Optimization algorithms
/ Optimization techniques
/ Power plants
/ Scheduling
/ Supplies
/ virtual power plant
2021
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Energy Management Scheduling for Microgrids in the Virtual Power Plant System Using Artificial Neural Networks
by
Hussain, S. M. Suhail
, Ustun, Taha Selim
, Sarker, Mahidur R.
, Ker, Pin Jern
, G. M. Abdolrasol, Maher
, Hannan, Mahammad Abdul
in
artificial neural network
/ Cost reduction
/ Electricity
/ Electricity distribution
/ Energy management
/ Industrial plant emissions
/ multi-microgrids
/ Neural networks
/ Optimization algorithms
/ Optimization techniques
/ Power plants
/ Scheduling
/ Supplies
/ virtual power plant
2021
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Energy Management Scheduling for Microgrids in the Virtual Power Plant System Using Artificial Neural Networks
Journal Article
Energy Management Scheduling for Microgrids in the Virtual Power Plant System Using Artificial Neural Networks
2021
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Overview
This study uses an artificial neural network (ANN) as an intelligent controller for the management and scheduling of a number of microgrids (MGs) in virtual power plants (VPP). Two ANN-based scheduling control approaches are presented: the ANN-based backtracking search algorithm (ANN-BBSA) and ANN-based binary practical swarm optimization (ANN-BPSO) algorithm. Both algorithms provide the optimal schedule for every distribution generation (DG) to limit fuel consumption, reduce CO2 emission, and increase the system efficiency towards smart and economic VPP operation as well as grid decarbonization. Different test scenarios are executed to evaluate the controllers’ robustness and performance under changing system conditions. The test cases are different load curves to evaluate the ANN’s performance on untrained data. The untrained and trained load models used are real-load parameter data recorders in northern parts of Malaysia. The test results are analyzed to investigate the performance of these controllers under varying power system conditions. Additionally, a comparative study is performed to compare their performances with other solutions available in the literature based on several parameters. Results show the superiority of the ANN-based controllers in terms of cost reduction and efficiency.
Publisher
MDPI AG
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