Contingency based congestion management and cost minimization using bee colony optimization technique

Unexpected contingency occurrence in a power system network can lead to high current flow in the system. This has made the system to be in a stressed condition which causes congestion to the system, while instability can be the next unpredictable incident. High current flow may also impose high fuel...

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Main Authors: Rahim M.N.A., Musirin I., Abidin I.Z., Othman M.M.
Other Authors: 55323600600
Format: Conference paper
Published: 2023
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spelling my.uniten.dspace-306222023-12-29T15:50:24Z Contingency based congestion management and cost minimization using bee colony optimization technique Rahim M.N.A. Musirin I. Abidin I.Z. Othman M.M. 55323600600 8620004100 35606640500 35944613200 Bee colony Congestion management Cost optimization Electrical Bandpass filters Electric lines Optimization Transmission line theory Bee colony Colony optimization Congestion management Control variable Cost minimization Cost optimization Current flows Electrical Fuel cost High currents Offline Power system networks Reliability test system System security Test systems Transmission constraint Transmission line Costs Unexpected contingency occurrence in a power system network can lead to high current flow in the system. This has made the system to be in a stressed condition which causes congestion to the system, while instability can be the next unpredictable incident. High current flow may also impose high fuel cost of the generators. Thus, congestion needs to be managed properly in order to reduce the undesired current flow in the transmission line for maintaining system security. This paper presents contingency based congestion management and cost minimization using bee colony optimization technique. In this study, bee colony optimization technique is applied to optimize the current flow in the system such that system security is preserved; considering transmission lines as the control variables. N-1 contingency is considered as the forecasted event, implemented offline so that the performance of the system can be evaluated. Cost minimization is also conducted by controlling the transmission constraints in the system. Validation through the IEEE 30-reliability test system and 6-Bus test system are conducted to simulate the scenarios. �2010 IEEE. Final 2023-12-29T07:50:24Z 2023-12-29T07:50:24Z 2010 Conference paper 10.1109/PECON.2010.5697705 2-s2.0-79951805150 https://www.scopus.com/inward/record.uri?eid=2-s2.0-79951805150&doi=10.1109%2fPECON.2010.5697705&partnerID=40&md5=6eb89f478e6ac2658dafedb9b3651b0a https://irepository.uniten.edu.my/handle/123456789/30622 5697705 891 896 Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
topic Bee colony
Congestion management
Cost optimization
Electrical
Bandpass filters
Electric lines
Optimization
Transmission line theory
Bee colony
Colony optimization
Congestion management
Control variable
Cost minimization
Cost optimization
Current flows
Electrical
Fuel cost
High currents
Offline
Power system networks
Reliability test system
System security
Test systems
Transmission constraint
Transmission line
Costs
spellingShingle Bee colony
Congestion management
Cost optimization
Electrical
Bandpass filters
Electric lines
Optimization
Transmission line theory
Bee colony
Colony optimization
Congestion management
Control variable
Cost minimization
Cost optimization
Current flows
Electrical
Fuel cost
High currents
Offline
Power system networks
Reliability test system
System security
Test systems
Transmission constraint
Transmission line
Costs
Rahim M.N.A.
Musirin I.
Abidin I.Z.
Othman M.M.
Contingency based congestion management and cost minimization using bee colony optimization technique
description Unexpected contingency occurrence in a power system network can lead to high current flow in the system. This has made the system to be in a stressed condition which causes congestion to the system, while instability can be the next unpredictable incident. High current flow may also impose high fuel cost of the generators. Thus, congestion needs to be managed properly in order to reduce the undesired current flow in the transmission line for maintaining system security. This paper presents contingency based congestion management and cost minimization using bee colony optimization technique. In this study, bee colony optimization technique is applied to optimize the current flow in the system such that system security is preserved; considering transmission lines as the control variables. N-1 contingency is considered as the forecasted event, implemented offline so that the performance of the system can be evaluated. Cost minimization is also conducted by controlling the transmission constraints in the system. Validation through the IEEE 30-reliability test system and 6-Bus test system are conducted to simulate the scenarios. �2010 IEEE.
author2 55323600600
author_facet 55323600600
Rahim M.N.A.
Musirin I.
Abidin I.Z.
Othman M.M.
format Conference paper
author Rahim M.N.A.
Musirin I.
Abidin I.Z.
Othman M.M.
author_sort Rahim M.N.A.
title Contingency based congestion management and cost minimization using bee colony optimization technique
title_short Contingency based congestion management and cost minimization using bee colony optimization technique
title_full Contingency based congestion management and cost minimization using bee colony optimization technique
title_fullStr Contingency based congestion management and cost minimization using bee colony optimization technique
title_full_unstemmed Contingency based congestion management and cost minimization using bee colony optimization technique
title_sort contingency based congestion management and cost minimization using bee colony optimization technique
publishDate 2023
_version_ 1806427549800071168
score 13.188404