Multi-Objective GWO with Opposition-Based Learning for Optimal Wind Turbine DG Allocation Considering Uncertainty and Seasonal Variability

ALJumah, Abdullah and Darwish, Ahmed (2025) Multi-Objective GWO with Opposition-Based Learning for Optimal Wind Turbine DG Allocation Considering Uncertainty and Seasonal Variability. Sustainability, 17 (19): 8819. ISSN 2071-1050

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Abstract

Optimally positioning renewable-based distributed generation (DG) units is vital for mitigating technical challenges in active distribution networks (ADNs). With the goal of achieving technical goals such as reduced losses and mitigated unstable voltage, two available optimization methods have been combined for positioning wind-energy DGs: grey wolf optimization (GWO) and opposition-based learning (OBL), which tries out opposite possibilities for each assessed population, thus addressing GWO’s susceptibility to becoming stuck in local optima. This new fusion technique enhances the algorithm’s scrutiny of each area under consideration and reduces the likelihood of premature convergence. Results show that, compared with standard GWO, the proposed OBL-GWO reduced active power losses by up to 95.16%, improved total voltage deviation (TVD) by 99.7%, and increased the minimum bus voltage from 0.907 p.u. to 0.994 p.u. In addition, the voltage stability index (VSI) was also enhanced by nearly 30%. The proposed methodology outperformed both standard GWO on the IEEE 33-bus test system and comparable techniques reported in the literature consistently. By accounting for the uncertainty in wind generation, load demand, and future growth, this framework offers a more reliable and practical planning approach that better reflects real operating conditions.

Item Type:
Journal Article
Journal or Publication Title:
Sustainability
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/2100/2105
Subjects:
?? renewable energy, sustainability and the environmentmanagement, monitoring, policy and lawgeography, planning and development ??
ID Code:
232744
Deposited By:
Deposited On:
01 Oct 2025 14:50
Refereed?:
Yes
Published?:
Published
Last Modified:
02 Oct 2025 02:15