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An Assessment of Wind Energy Potential for the Three Topographic Regions of Eritrea

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  • Teklebrhan Negash

    (Department of Mechanical Engineering, Mai-Nefhi College of Engineering and Technology, P.O. Box 12676, Asmara, Eritrea)

  • Erik Möllerström

    (The Rydberg Laboratory for Applied Sciences, Halmstad University, P.O. Box 823, SE-301 18 Halmstad, Sweden)

  • Fredric Ottermo

    (The Rydberg Laboratory for Applied Sciences, Halmstad University, P.O. Box 823, SE-301 18 Halmstad, Sweden)

Abstract

This paper presents the wind energy potential and wind characteristics for 25 wind sites in Eritrea, based on wind data from the years 2000–2005. The studied sites are distributed all over Eritrea, but can roughly be divided into three regions: coastal region, western lowlands, and central highlands. The coastal region sites have the highest potential for wind power. An uncertainty, due to extrapolating the wind speed from the 10-m measurements, should be noted. The year to year variations are typically small and, for the sites deemed as suitable for wind power, the seasonal variations are most prominent in the coastal region with a peak during the period November–March. Moreover, Weibull parameters, prevailing wind direction, and wind power density recalculated for 100 m above ground are presented for all 25 sites. Comparing the results to values from the web-based, large-scale dataset, the Global Wind Atlas (GWA), both mean wind speed and wind power density are typically higher for the measurements. The difference is especially large for the more complex-terrain central highland sites where GWA results are also likely to be more uncertain. The result of this study can be used to make preliminary assessments on possible power production potential at the given sites.

Suggested Citation

  • Teklebrhan Negash & Erik Möllerström & Fredric Ottermo, 2020. "An Assessment of Wind Energy Potential for the Three Topographic Regions of Eritrea," Energies, MDPI, vol. 13(7), pages 1-12, April.
  • Handle: RePEc:gam:jeners:v:13:y:2020:i:7:p:1846-:d:343879
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    References listed on IDEAS

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    2. Jan K. Kazak & Joanna A. Kamińska & Rafał Madej & Marta Bochenkiewicz, 2020. "Where Renewable Energy Sources Funds are Invested? Spatial Analysis of Energy Production Potential and Public Support," Energies, MDPI, vol. 13(21), pages 1-26, October.

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