@article{ajer20251323,
author={{J.K, Omboto and J.N, Kamau and C.O, Saoke and D.W, Wekesa},
title={A Simulation-Based Study at Kenya's Ngong Hills Site, Optimizing Wind Farm Layouts for Cost-Effective Energy Production},
journal={American Journal of Energy Research},
volume={13},
number={2},
pages={72--79},
year={2025},
url={https://pubs.sciepub.com/ajer/13/2/3},
issn={2328-7330},
abstract={Wind farm design increasingly demands careful balancing of energy yield, wake effects, and economic costs to meet renewable energy targets affordably. This study develops a simulation-based optimization framework tailored to the Ngong Hills wind farm in Kenya. Using a Python-based genetic algorithm paired with the Jensen wake model, we evaluate four layout scenarios: homogeneous layouts of Vestas V52 (850?kW) and NREL 5?MW turbines, as well as mixed configurations combining these or mid-sized Vestas V66 (1.75?MW) and V90 (3.0?MW) turbines, across 800,000?m2 site with realistic wind speed and direction distributions. The genetic algorithm optimized turbine placements while enforcing minimum rotor-diameter-based spacing and varying hub heights in the same wind farm to mitigate wake interactions. Results showed that homogeneous V52 and NREL layouts achieved comparable LCOE of $52/MWh, but required trade-offs between the number of turbines and spacing. A hybrid layout mixing V52 and NREL turbines achieved the lowest LCOE of $37/MWh and reduced wake losses by 18.2%, highlighting the value of integrating heterogeneous turbines with staggered hub heights. In contrast, the V66+V90 layout, despite its higher AEP potential, suffered from increased wake interactions and capital costs, leading to an LCOE of $58/MWh. These findings show that a comprehensive economic evaluation, beyond assessing power output alone, proved essential to identifying truly optimal layouts. The mixed V52?+?NREL configuration exemplifies how combining high-capacity turbines with densely packed smaller units can mitigate wake effects and minimize LCOE, outperforming homogeneous arrangements. These insights support a strategic layout and turbine design philosophy that considers site-specific wind characteristics, varied turbine types, and cost metrics to create more cost-effective and sustainable wind farms.},
doi={10.12691/ajer-13-2-3}
publisher={Science and Education Publishing}
}
