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Dynamic Error Correction Method in Tachometric Anemometers for Measurements of Wind Energy

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  • Paweł Ligęza

    (Strata Mechanics Research Institute, Polish Academy of Sciences, Reymonta 27, 30-059 Krakow, Poland)

Abstract

Measurements of air flow velocity are essential at every stage of the design, construction and operation of wind turbines. One of the basic measurement tools in this area is the tachometric anemometer, which is based on the simple physical phenomenon of the air kinetic energy exchange with a rotating measuring element. Tachometric anemometers have favorable operational features and good static metrological parameters. However, in the case of fast-changing flows, the measurement is burdened with a significant dynamic error, and the measured average value of the velocity is overestimated. This article presents the concept and results of pilot studies of a dynamic error correction method of tachometric anemometers. The correction consists of the precise measurement of the rotor’s rotational velocity and determination of the measured air velocity, taking into account the dynamics of the instrument. The developed method can be used in tachometric anemometers intended for laboratory, technical and industrial measurements in time-varying flows. One of the important application areas is the measurement of wind energy.

Suggested Citation

  • Paweł Ligęza, 2022. "Dynamic Error Correction Method in Tachometric Anemometers for Measurements of Wind Energy," Energies, MDPI, vol. 15(11), pages 1-9, June.
  • Handle: RePEc:gam:jeners:v:15:y:2022:i:11:p:4132-:d:831661
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    References listed on IDEAS

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