Immunized-evolutionary algorithm based technique for loss control in transmission system with multi-load increment

Loss issue is significant in power system since it affects the operation of power system, which ultimately can be translated to monetary effect. Incremental demand that explicitly adding the reactive load causes extra heating losses in the transmission circuit. Without appropriate remedial control,...

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Main Authors: Shaaya S.A., Musirin I., Sulaiman S.I., Mansor M.H.
Other Authors: 16022846200
Format: Article
Published: Institute of Advanced Engineering and Science 2023
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spelling my.uniten.dspace-232082023-05-29T14:38:27Z Immunized-evolutionary algorithm based technique for loss control in transmission system with multi-load increment Shaaya S.A. Musirin I. Sulaiman S.I. Mansor M.H. 16022846200 8620004100 56207226400 56372667100 Loss issue is significant in power system since it affects the operation of power system, which ultimately can be translated to monetary effect. Incremental demand that explicitly adding the reactive load causes extra heating losses in the transmission circuit. Without appropriate remedial control, the temperature increase on transmission line cable would end with insulation failure. This phenomenon can be alleviated with a proper compensation scheme that provides optimal solution along with avoidance of under-compensation or over-compensation. Evolutionary Programming (EP) has been recognised as one of the powerful optimisation technique, applied in solving power system problems. Nevertheless, EP is an old technique that sometimes could reach to a settlement that is not fully satisfied. Thus, the need fora new approach to improve the setback is urgent. This paper presents immunized-evolutionary algorithm based technique for loss control in transmission system with multi -load increment. The classical EP was integrated with immune algorithm so as to reduce the computational burden experienced by the classical EP.The algorithm has been tested on an IEEE 12-Bus System and IEEE 14-Bus System.Comparative study was conducted between EP and IEP in terms of optimisation performance. The optimal size and location of PV determined by IEP was able to control the loss in transmission system when the load increases. Results obtained from the studies revealed the merit of the proposed IEP; indicating its feasibility for future implementation in practical system. � 2017 Institute of Advanced Engineering and Science. All rights reserved. Final 2023-05-29T06:38:26Z 2023-05-29T06:38:26Z 2017 Article 10.11591/ijeecs.v6.i3.pp737-748 2-s2.0-85020840017 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85020840017&doi=10.11591%2fijeecs.v6.i3.pp737-748&partnerID=40&md5=9b7a0fec8d2ad96f25213af9eded3f2c https://irepository.uniten.edu.my/handle/123456789/23208 6 3 737 748 Institute of Advanced Engineering and Science Scopus
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description Loss issue is significant in power system since it affects the operation of power system, which ultimately can be translated to monetary effect. Incremental demand that explicitly adding the reactive load causes extra heating losses in the transmission circuit. Without appropriate remedial control, the temperature increase on transmission line cable would end with insulation failure. This phenomenon can be alleviated with a proper compensation scheme that provides optimal solution along with avoidance of under-compensation or over-compensation. Evolutionary Programming (EP) has been recognised as one of the powerful optimisation technique, applied in solving power system problems. Nevertheless, EP is an old technique that sometimes could reach to a settlement that is not fully satisfied. Thus, the need fora new approach to improve the setback is urgent. This paper presents immunized-evolutionary algorithm based technique for loss control in transmission system with multi -load increment. The classical EP was integrated with immune algorithm so as to reduce the computational burden experienced by the classical EP.The algorithm has been tested on an IEEE 12-Bus System and IEEE 14-Bus System.Comparative study was conducted between EP and IEP in terms of optimisation performance. The optimal size and location of PV determined by IEP was able to control the loss in transmission system when the load increases. Results obtained from the studies revealed the merit of the proposed IEP; indicating its feasibility for future implementation in practical system. � 2017 Institute of Advanced Engineering and Science. All rights reserved.
author2 16022846200
author_facet 16022846200
Shaaya S.A.
Musirin I.
Sulaiman S.I.
Mansor M.H.
format Article
author Shaaya S.A.
Musirin I.
Sulaiman S.I.
Mansor M.H.
spellingShingle Shaaya S.A.
Musirin I.
Sulaiman S.I.
Mansor M.H.
Immunized-evolutionary algorithm based technique for loss control in transmission system with multi-load increment
author_sort Shaaya S.A.
title Immunized-evolutionary algorithm based technique for loss control in transmission system with multi-load increment
title_short Immunized-evolutionary algorithm based technique for loss control in transmission system with multi-load increment
title_full Immunized-evolutionary algorithm based technique for loss control in transmission system with multi-load increment
title_fullStr Immunized-evolutionary algorithm based technique for loss control in transmission system with multi-load increment
title_full_unstemmed Immunized-evolutionary algorithm based technique for loss control in transmission system with multi-load increment
title_sort immunized-evolutionary algorithm based technique for loss control in transmission system with multi-load increment
publisher Institute of Advanced Engineering and Science
publishDate 2023
_version_ 1806425546026909696
score 13.222552