Yayın:
Enhanced Coati Optimization Algorithm for Static and Dynamic Transmission Network Expansion Planning Problems

dc.contributor.authorDemirbas, Muhammet
dc.contributor.authorKenan Dosoglu, M.
dc.contributor.authorDuman, Serhat
dc.date.accessioned2026-01-04T21:38:16Z
dc.date.issued2025-01-01
dc.description.abstractThe power systems are becoming more and more complex due to the inclusion of new components and increasing load demand. Consequently, it is imperative to incorporate additional generation units and transmission links into the system. Transmission Network Expansion Planning (TNEP) seeks to include generation units and transmission lines into the system at optimal locations and minimal costs. Mathematical techniques are extensively employed to address the problem. Nonetheless, mathematical methods necessitate extensive computation durations. Consequently, novel solution strategies are under investigation. The TNEP problem is characterized by an innovative and effective metaheuristic optimization techniques. This study presents a novel Opposition Based Learning and Fitness Distance Balance based Coati Optimization Algorithm (FDBCOA-OBL) designed to address Static and Dynamic TNEP problems. An extensive experimental investigation was undertaken to evaluate the efficacy of the suggested method in addressing the benchmark test suites and the TNEP problem. The FDBCOA-OBL algorithm, utilizing the Elite OBL approach, surpassed all other comparative versions in addressing the benchmark test problems. The Wilcoxon analysis indicates that it lost 6 problems, tied in 110, and won 166 problems. The proposed approach resolved the TNEP problem in 6, 25, and 93-bus test systems. The Static TNEP solution was applied to the 6 and 25 bus test systems, while the Dynamic Multistage TNEP method was utilized in the 93-bus test system. The acquired investment expenses were compared to the research already documented in the literature. The findings indicate that the suggested method demonstrates robust performance.
dc.description.urihttps://doi.org/10.1109/access.2025.3544523
dc.description.urihttps://doaj.org/article/5dee7842137f4532901555f9f8489801
dc.identifier.doi10.1109/access.2025.3544523
dc.identifier.eissn2169-3536
dc.identifier.endpage35100
dc.identifier.openairedoi_dedup___::8b2fc5cb8c0dfc49f26ed5abfcbb7ed7
dc.identifier.orcid0000-0002-5223-1279
dc.identifier.orcid0000-0001-8804-7070
dc.identifier.orcid0000-0002-1091-125x
dc.identifier.scopus2-s2.0-85218756692
dc.identifier.startpage35068
dc.identifier.urihttps://hdl.handle.net/20.500.12597/42430
dc.identifier.volume13
dc.publisherInstitute of Electrical and Electronics Engineers (IEEE)
dc.relation.ispartofIEEE Access
dc.rightsOPEN
dc.subjectfitness-distance balance method
dc.subjectCoati optimization algorithm
dc.subjectopposition-based learning
dc.subjectElectrical engineering. Electronics. Nuclear engineering
dc.subjecttransmission network expansion planning problem
dc.subjectTK1-9971
dc.titleEnhanced Coati Optimization Algorithm for Static and Dynamic Transmission Network Expansion Planning Problems
dc.typeArticle
dspace.entity.typePublication
local.api.response{"authors":[{"fullName":"Muhammet Demirbas","name":"Muhammet","surname":"Demirbas","rank":1,"pid":{"id":{"scheme":"orcid_pending","value":"0000-0002-5223-1279"},"provenance":null}},{"fullName":"M. Kenan Dosoglu","name":"M.","surname":"Kenan Dosoglu","rank":2,"pid":{"id":{"scheme":"orcid","value":"0000-0001-8804-7070"},"provenance":null}},{"fullName":"Serhat Duman","name":"Serhat","surname":"Duman","rank":3,"pid":{"id":{"scheme":"orcid","value":"0000-0002-1091-125x"},"provenance":null}}],"openAccessColor":"gold","publiclyFunded":false,"type":"publication","language":{"code":"und","label":"Undetermined"},"countries":null,"subjects":[{"subject":{"scheme":"keyword","value":"fitness-distance balance method"},"provenance":null},{"subject":{"scheme":"keyword","value":"Coati optimization algorithm"},"provenance":null},{"subject":{"scheme":"keyword","value":"opposition-based learning"},"provenance":null},{"subject":{"scheme":"keyword","value":"Electrical engineering. Electronics. Nuclear engineering"},"provenance":null},{"subject":{"scheme":"keyword","value":"transmission network expansion planning problem"},"provenance":null},{"subject":{"scheme":"keyword","value":"TK1-9971"},"provenance":null}],"mainTitle":"Enhanced Coati Optimization Algorithm for Static and Dynamic Transmission Network Expansion Planning Problems","subTitle":null,"descriptions":["The power systems are becoming more and more complex due to the inclusion of new components and increasing load demand. Consequently, it is imperative to incorporate additional generation units and transmission links into the system. Transmission Network Expansion Planning (TNEP) seeks to include generation units and transmission lines into the system at optimal locations and minimal costs. Mathematical techniques are extensively employed to address the problem. Nonetheless, mathematical methods necessitate extensive computation durations. Consequently, novel solution strategies are under investigation. The TNEP problem is characterized by an innovative and effective metaheuristic optimization techniques. This study presents a novel Opposition Based Learning and Fitness Distance Balance based Coati Optimization Algorithm (FDBCOA-OBL) designed to address Static and Dynamic TNEP problems. An extensive experimental investigation was undertaken to evaluate the efficacy of the suggested method in addressing the benchmark test suites and the TNEP problem. The FDBCOA-OBL algorithm, utilizing the Elite OBL approach, surpassed all other comparative versions in addressing the benchmark test problems. The Wilcoxon analysis indicates that it lost 6 problems, tied in 110, and won 166 problems. The proposed approach resolved the TNEP problem in 6, 25, and 93-bus test systems. The Static TNEP solution was applied to the 6 and 25 bus test systems, while the Dynamic Multistage TNEP method was utilized in the 93-bus test system. The acquired investment expenses were compared to the research already documented in the literature. The findings indicate that the suggested method demonstrates robust performance."],"publicationDate":"2025-01-01","publisher":"Institute of Electrical and Electronics Engineers (IEEE)","embargoEndDate":null,"sources":["Crossref","IEEE Access, Vol 13, Pp 35068-35100 (2025)"],"formats":null,"contributors":null,"coverages":null,"bestAccessRight":{"code":"c_abf2","label":"OPEN","scheme":"http://vocabularies.coar-repositories.org/documentation/access_rights/"},"container":{"name":"IEEE Access","issnPrinted":null,"issnOnline":"2169-3536","issnLinking":null,"ep":"35100","iss":null,"sp":"35068","vol":"13","edition":null,"conferencePlace":null,"conferenceDate":null},"documentationUrls":null,"codeRepositoryUrl":null,"programmingLanguage":null,"contactPeople":null,"contactGroups":null,"tools":null,"size":null,"version":null,"geoLocations":null,"id":"doi_dedup___::8b2fc5cb8c0dfc49f26ed5abfcbb7ed7","originalIds":["10.1109/access.2025.3544523","50|doiboost____|8b2fc5cb8c0dfc49f26ed5abfcbb7ed7","oai:doaj.org/article:5dee7842137f4532901555f9f8489801","50|doajarticles::899669f712eca90c20ec2f83e88552be"],"pids":[{"scheme":"doi","value":"10.1109/access.2025.3544523"}],"dateOfCollection":null,"lastUpdateTimeStamp":null,"indicators":{"citationImpact":{"citationCount":0,"influence":2.5349236e-9,"popularity":2.8669784e-9,"impulse":0,"citationClass":"C5","influenceClass":"C5","impulseClass":"C5","popularityClass":"C5"}},"instances":[{"pids":[{"scheme":"doi","value":"10.1109/access.2025.3544523"}],"license":"CC BY","type":"Article","urls":["https://doi.org/10.1109/access.2025.3544523"],"publicationDate":"2025-01-01","refereed":"peerReviewed"},{"alternateIdentifiers":[{"scheme":"doi","value":"10.1109/access.2025.3544523"}],"type":"Article","urls":["https://doaj.org/article/5dee7842137f4532901555f9f8489801"],"publicationDate":"2025-01-01","refereed":"nonPeerReviewed"}],"isGreen":false,"isInDiamondJournal":false}
local.import.sourceOpenAire
local.indexed.atScopus

Dosyalar

Koleksiyonlar