Wind Data Sources

Chapter
Part of the Green Energy and Technology book series (GREEN)

Abstract

The resource for energy generation by wind turbines—the wind—is a vector, i.e. characterized by an amount (wind speed) and a direction (wind direction). Generally, (apart from small-scale and convective processes and flows over steep topography) the vertical wind component is much smaller than the horizontal wind components. Therefore, frequently, only horizontal wind speed is measured. Furthermore, wind is a highly variable atmospheric parameter.

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© Springer International Publishing AG, part of Springer Nature 2018

Authors and Affiliations

  1. 1.Institut für Meteorologie und KlimaforschungKarlsruher Institut für TechnologieGarmisch-PartenkirchenGermany

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