Vol. 24 Núm. 3 (2022)
Artículo original

Caracterización del viento con la función de Weibull para una zona altoandina, Laraqueri - Perú

Ubaldo Yancachajlla Tito
Departamento de Ingeniería en Energías Renovables, Universidad Nacional de Juliaca, Av. Nueva Zelandia 631, 21001, Juliaca, Perú
Oliver Amadeo Vilca Huayta
Departamento de Ingeniería de Sistemas, Universidad Nacional del Altiplano, Av. Floral 1153, 21001, Puno, Perú

Publicado 25-08-2022

Palabras clave

  • Distribución de Weibull,
  • densidad de potencia eólico,
  • rosa de los vientos,
  • velocidad del viento

Cómo citar

Yancachajlla Tito, U., & Vilca Huayta, O. A. (2022). Caracterización del viento con la función de Weibull para una zona altoandina, Laraqueri - Perú. Revista De Investigaciones Altoandinas - Journal of High Andean Research, 24(3), 190-198. https://doi.org/10.18271/ria.2022.439

Resumen

Es importante el estudio de la disponibilidad de energías renovables y en particular el eólico para su valorización. Por lo que este artículo analiza el potencial de la energía eólica de un sitio ubicado en el sur del Perú (Laraqueri), utilizando datos de viento de 2020 a una altura de 10 metros sobre el nivel del suelo. Se utilizaron dos métodos numéricos para estimar los parámetros de la función de distribución de Weibull y se calculó la densidad de potencia para cada mes. También se calculó el grado de error de la función de Weibull con los datos observados. Se concluye que, la ubicación propuesta es apropiada para la generación de energía eólica de baja potencia y la metodología propuesta se puede utilizar en otros lugares.

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