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La aplicación de datos masivos en economía de la energía: una revisión

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  • Miguel Ángel Rodríguez López
  • Diego Rodríguez Rodríguez

Abstract

El objetivo de este trabajo es ofrecer un panorama general sobre los principales campos de aplicación de las técnicas de datos masivos en el ámbito de la energía. Como podrá comprobarse, esos ámbitos son muy variados, por lo que el trabajo pretende también aportar intuición sobre el tipo de cuestiones que generan más interés o que probablemente recibirán más atención en los próximos años, dada su relevancia en el ámbito de la transición energética. Para ello, en el segundo apartado se realiza una aproximación muy introductoria a la transición energética y al estado de desarrollo de distintas tecnologías y estrategias que son claves en el proceso de descarbonización. A continuación, en el tercer apartado, se describen de un modo sencillo las principales aproximaciones metodológicas para el uso masivo de datos. El apartado cuarto motiva y muestra la aplicación de esas técnicas en diversas áreas claves en el área de la transición energética en el ámbito de la electricidad, como la predicción de la generación y los precios, la agregación de la demanda, la integración de las baterías o la demanda de calefacción, entre otros. El quinto apartado extiende esa aproximación a otros vectores no eléctricos, en particular el gas y el petróleo. Por último, el sexto apartado cierra el trabajo con algunas reflexiones finales.

Suggested Citation

  • Miguel Ángel Rodríguez López & Diego Rodríguez Rodríguez, 2024. "La aplicación de datos masivos en economía de la energía: una revisión," Working Papers 2024-08, FEDEA.
  • Handle: RePEc:fda:fdaddt:2024-08
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    References listed on IDEAS

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