Stochastic optimal power flow framework with incorporation of wind turbines and solar PVs using improved liver cancer algorithm
Author | Khan, Noor Habib |
Author | Wang, Yong |
Author | Habib, Salman |
Author | Jamal, Raheela |
Author | Gulzar, Muhammad Majid |
Author | Muyeen, S. M. |
Author | Ebeed, Mohamed |
Available date | 2024-12-17T09:32:27Z |
Publication Date | 2024-10-26 |
Publication Name | IET Renewable Power Generation |
Identifier | http://dx.doi.org/10.1049/rpg2.13113 |
Citation | Khan, N. H., Wang, Y., Habib, S., Jamal, R., Gulzar, M. M., Muyeen, S. M., & Ebeed, M. (2024). Stochastic optimal power flow framework with incorporation of wind turbines and solar PVs using improved liver cancer algorithm. IET Renewable Power Generation. |
ISSN | 17521416 |
Abstract | The present study introduces a nature inspired improved liver cancer algorithm (ILCA) for solving the non-convex engineering optimization issues. The traditional LCA (t-LCA) inspires from the conduct of liver tumours and integrates biological ethics during the optimization procedure. However, t-LCA facing stagnation issues and may trap into local optima. To avoid such issues and provide the optimal solution, there are some modifications are implemented into the internal structure of t-LCA based on Weibull flight operator, mutation-based approach, quasi-opposite-based learning and gorilla troops exploitation-based mechanisms to enhance the overall strength of the algorithm to obtain the global solution. For validation of ILCA, the non-parametric and the statistical analysis are performed using benchmark standard functions. Moreover, ILCA is applied to resolve the stochastic renewable-based (wind turbines + PVs) optimal power flow problem using a modified RER-based IEEE 57-bus. The objective of this work is to |
Language | en |
Publisher | John Wiley and Sons inc |
Subject | optimisation power control renewable energy sources |
Type | Article |
Issue Number | 14 |
Volume Number | 18 |
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Electrical Engineering [2685 items ]