An Optimized Binary Scheduling Controller for Microgrid Energy Management Considering Real Load Conditions
A dynamical power demand and stochastic nature of energy resources posses difficulties in controlling and managing output power. These challenges lead to instability and inconsistency of the entire operation which can cause unstable and power quality issues. This study presents an optimal schedule c...
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my.uniten.dspace-344352024-10-14T11:19:46Z An Optimized Binary Scheduling Controller for Microgrid Energy Management Considering Real Load Conditions Mannan M. Roslan M.F. Reza M.S. Mansor M. Jern K.P. Hossain M.J. Hannan M.A. 57224923024 57220188085 59055914200 6701749037 57220589801 57209871691 7103014445 Binary Particle Swarm Optimization Distributed energy resources Energy management Microgrid Optimization algorithm Scheduling controller Constrained optimization Controllers Cost reduction Energy resources Energy utilization Operating costs Particle swarm optimization (PSO) Power quality Scheduling algorithms Stochastic systems Wind Algorithms optimizations Binary particle swarm Binary particle swarm optimization Distributed Energy Resources Load condition Microgrid Optimization algorithms Particle swarm algorithm Power demands Scheduling controllers Energy management A dynamical power demand and stochastic nature of energy resources posses difficulties in controlling and managing output power. These challenges lead to instability and inconsistency of the entire operation which can cause unstable and power quality issues. This study presents an optimal schedule controller for microgrid energy management, utilizing the Binary Particle Swarm algorithm (BPSO) to minimize costs and ensure optimal power delivery to loads. The controller's aims include minimizing total operating costs for distributed energy resources and solving intricate constraint optimization issues with scheduling management operations. The proposed approach's effectiveness is evaluated within an IEEE 14-bus configuration with five microgrids (MGs) integrated with RESs using real load data from Perlis, Malaysia. The BPSO optimization technique offers an exceptional binary fitness function to find the optimal cell, utilizing real data such as solar radiation, wind speed, battery charging/discharging, fuel conditions, and demand. To confirm the efficiency of the developed controller, a comparison is conducted between the results achieved with and without microgrid (MG) integration. The results reveal the robustness of the BPSO algorithm in reducing energy consumption and cost by 199.6 MW to 316.53 MW and RM 87,250.35 to RM 138,327.5 respectively. As a result, an optimized scheduling controller-based BPSO optimization outperforms in terms of savings cost, reduced energy consumption, optimal DER use, and decreased CO2 emissions. � 2023 IEEE. Final 2024-10-14T03:19:46Z 2024-10-14T03:19:46Z 2023 Conference Paper 10.1109/ETFG55873.2023.10407196 2-s2.0-85185792899 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85185792899&doi=10.1109%2fETFG55873.2023.10407196&partnerID=40&md5=0e7746461533b8acbdc5365c2911cc4b https://irepository.uniten.edu.my/handle/123456789/34435 Institute of Electrical and Electronics Engineers Inc. Scopus |
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Binary Particle Swarm Optimization Distributed energy resources Energy management Microgrid Optimization algorithm Scheduling controller Constrained optimization Controllers Cost reduction Energy resources Energy utilization Operating costs Particle swarm optimization (PSO) Power quality Scheduling algorithms Stochastic systems Wind Algorithms optimizations Binary particle swarm Binary particle swarm optimization Distributed Energy Resources Load condition Microgrid Optimization algorithms Particle swarm algorithm Power demands Scheduling controllers Energy management |
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Binary Particle Swarm Optimization Distributed energy resources Energy management Microgrid Optimization algorithm Scheduling controller Constrained optimization Controllers Cost reduction Energy resources Energy utilization Operating costs Particle swarm optimization (PSO) Power quality Scheduling algorithms Stochastic systems Wind Algorithms optimizations Binary particle swarm Binary particle swarm optimization Distributed Energy Resources Load condition Microgrid Optimization algorithms Particle swarm algorithm Power demands Scheduling controllers Energy management Mannan M. Roslan M.F. Reza M.S. Mansor M. Jern K.P. Hossain M.J. Hannan M.A. An Optimized Binary Scheduling Controller for Microgrid Energy Management Considering Real Load Conditions |
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A dynamical power demand and stochastic nature of energy resources posses difficulties in controlling and managing output power. These challenges lead to instability and inconsistency of the entire operation which can cause unstable and power quality issues. This study presents an optimal schedule controller for microgrid energy management, utilizing the Binary Particle Swarm algorithm (BPSO) to minimize costs and ensure optimal power delivery to loads. The controller's aims include minimizing total operating costs for distributed energy resources and solving intricate constraint optimization issues with scheduling management operations. The proposed approach's effectiveness is evaluated within an IEEE 14-bus configuration with five microgrids (MGs) integrated with RESs using real load data from Perlis, Malaysia. The BPSO optimization technique offers an exceptional binary fitness function to find the optimal cell, utilizing real data such as solar radiation, wind speed, battery charging/discharging, fuel conditions, and demand. To confirm the efficiency of the developed controller, a comparison is conducted between the results achieved with and without microgrid (MG) integration. The results reveal the robustness of the BPSO algorithm in reducing energy consumption and cost by 199.6 MW to 316.53 MW and RM 87,250.35 to RM 138,327.5 respectively. As a result, an optimized scheduling controller-based BPSO optimization outperforms in terms of savings cost, reduced energy consumption, optimal DER use, and decreased CO2 emissions. � 2023 IEEE. |
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57224923024 |
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57224923024 Mannan M. Roslan M.F. Reza M.S. Mansor M. Jern K.P. Hossain M.J. Hannan M.A. |
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Conference Paper |
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Mannan M. Roslan M.F. Reza M.S. Mansor M. Jern K.P. Hossain M.J. Hannan M.A. |
author_sort |
Mannan M. |
title |
An Optimized Binary Scheduling Controller for Microgrid Energy Management Considering Real Load Conditions |
title_short |
An Optimized Binary Scheduling Controller for Microgrid Energy Management Considering Real Load Conditions |
title_full |
An Optimized Binary Scheduling Controller for Microgrid Energy Management Considering Real Load Conditions |
title_fullStr |
An Optimized Binary Scheduling Controller for Microgrid Energy Management Considering Real Load Conditions |
title_full_unstemmed |
An Optimized Binary Scheduling Controller for Microgrid Energy Management Considering Real Load Conditions |
title_sort |
optimized binary scheduling controller for microgrid energy management considering real load conditions |
publisher |
Institute of Electrical and Electronics Engineers Inc. |
publishDate |
2024 |
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1814061120764248064 |
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13.219503 |