The epileptic power supply from the national grid due to instability is a concern to energy consumer. This instability in power supply experienced in power distribution network could be minimized by introducing Optimized Genetic Algorithm (OGA). It is achieved by characterizing 33KV distribution network, running the load flow of the characterized 33KV distribution network, determining the distribution losses from the load flow. Minimizing the determined losses in 33kv distribution network using (OGA), and designing SIMULINK model for improving loss minimization in 33kv power distribution network using OGA. Finally, validating and justifying the percentage of loss reduction in improving loss minimization in 33kv power distribution network without and with OGA. The results obtained are conventional percentage power loss in 33KV distribution network, 75%, while that when OGA is incorporated in the system is 72.9%. With these results obtained, the percentage improvement in loss reduction in 33KV distribution network when OGA is used is 2.1%. The conventional percentage of power loss in 33KV distribution network is 80%. The percentage power loss in the distribution network now is 72.9%; hence, power loss reduction in distribution network. Unmitigated power loss was 76.7% when OGA is introduced we had 74.63%. The percentage power loss in distribution network in bus 8 is 81.7% while that when OGA is applied is 79.49%. The percentage power loss in bus 9 of 33KV distribution network is 86.7%. Finally, when optimized genetic algorithm is incorporated in the system the percentage power loss in the network was reduced to 84.36%.
Published in | International Journal of Systems Engineering (Volume 5, Issue 1) |
DOI | 10.11648/j.ijse.20210501.15 |
Page(s) | 34-42 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
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Copyright © The Author(s), 2021. Published by Science Publishing Group |
Improving, Loss Minimization, Power Distribution, Optimized, Genetic Algorithm (OGA)
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APA Style
Ngang Bassey Ngang, Bakare Kazeem, Ugwu Kevin Ikechukwu, Aneke Nnamere Ezekiel. (2021). Improving Loss Minimization in 33kv Power Distribution Network Using Optimized Genetic Algorithm. International Journal of Systems Engineering, 5(1), 34-42. https://doi.org/10.11648/j.ijse.20210501.15
ACS Style
Ngang Bassey Ngang; Bakare Kazeem; Ugwu Kevin Ikechukwu; Aneke Nnamere Ezekiel. Improving Loss Minimization in 33kv Power Distribution Network Using Optimized Genetic Algorithm. Int. J. Syst. Eng. 2021, 5(1), 34-42. doi: 10.11648/j.ijse.20210501.15
AMA Style
Ngang Bassey Ngang, Bakare Kazeem, Ugwu Kevin Ikechukwu, Aneke Nnamere Ezekiel. Improving Loss Minimization in 33kv Power Distribution Network Using Optimized Genetic Algorithm. Int J Syst Eng. 2021;5(1):34-42. doi: 10.11648/j.ijse.20210501.15
@article{10.11648/j.ijse.20210501.15, author = {Ngang Bassey Ngang and Bakare Kazeem and Ugwu Kevin Ikechukwu and Aneke Nnamere Ezekiel}, title = {Improving Loss Minimization in 33kv Power Distribution Network Using Optimized Genetic Algorithm}, journal = {International Journal of Systems Engineering}, volume = {5}, number = {1}, pages = {34-42}, doi = {10.11648/j.ijse.20210501.15}, url = {https://doi.org/10.11648/j.ijse.20210501.15}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ijse.20210501.15}, abstract = {The epileptic power supply from the national grid due to instability is a concern to energy consumer. This instability in power supply experienced in power distribution network could be minimized by introducing Optimized Genetic Algorithm (OGA). It is achieved by characterizing 33KV distribution network, running the load flow of the characterized 33KV distribution network, determining the distribution losses from the load flow. Minimizing the determined losses in 33kv distribution network using (OGA), and designing SIMULINK model for improving loss minimization in 33kv power distribution network using OGA. Finally, validating and justifying the percentage of loss reduction in improving loss minimization in 33kv power distribution network without and with OGA. The results obtained are conventional percentage power loss in 33KV distribution network, 75%, while that when OGA is incorporated in the system is 72.9%. With these results obtained, the percentage improvement in loss reduction in 33KV distribution network when OGA is used is 2.1%. The conventional percentage of power loss in 33KV distribution network is 80%. The percentage power loss in the distribution network now is 72.9%; hence, power loss reduction in distribution network. Unmitigated power loss was 76.7% when OGA is introduced we had 74.63%. The percentage power loss in distribution network in bus 8 is 81.7% while that when OGA is applied is 79.49%. The percentage power loss in bus 9 of 33KV distribution network is 86.7%. Finally, when optimized genetic algorithm is incorporated in the system the percentage power loss in the network was reduced to 84.36%.}, year = {2021} }
TY - JOUR T1 - Improving Loss Minimization in 33kv Power Distribution Network Using Optimized Genetic Algorithm AU - Ngang Bassey Ngang AU - Bakare Kazeem AU - Ugwu Kevin Ikechukwu AU - Aneke Nnamere Ezekiel Y1 - 2021/06/09 PY - 2021 N1 - https://doi.org/10.11648/j.ijse.20210501.15 DO - 10.11648/j.ijse.20210501.15 T2 - International Journal of Systems Engineering JF - International Journal of Systems Engineering JO - International Journal of Systems Engineering SP - 34 EP - 42 PB - Science Publishing Group SN - 2640-4230 UR - https://doi.org/10.11648/j.ijse.20210501.15 AB - The epileptic power supply from the national grid due to instability is a concern to energy consumer. This instability in power supply experienced in power distribution network could be minimized by introducing Optimized Genetic Algorithm (OGA). It is achieved by characterizing 33KV distribution network, running the load flow of the characterized 33KV distribution network, determining the distribution losses from the load flow. Minimizing the determined losses in 33kv distribution network using (OGA), and designing SIMULINK model for improving loss minimization in 33kv power distribution network using OGA. Finally, validating and justifying the percentage of loss reduction in improving loss minimization in 33kv power distribution network without and with OGA. The results obtained are conventional percentage power loss in 33KV distribution network, 75%, while that when OGA is incorporated in the system is 72.9%. With these results obtained, the percentage improvement in loss reduction in 33KV distribution network when OGA is used is 2.1%. The conventional percentage of power loss in 33KV distribution network is 80%. The percentage power loss in the distribution network now is 72.9%; hence, power loss reduction in distribution network. Unmitigated power loss was 76.7% when OGA is introduced we had 74.63%. The percentage power loss in distribution network in bus 8 is 81.7% while that when OGA is applied is 79.49%. The percentage power loss in bus 9 of 33KV distribution network is 86.7%. Finally, when optimized genetic algorithm is incorporated in the system the percentage power loss in the network was reduced to 84.36%. VL - 5 IS - 1 ER -