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Application of algorithms for forecasting and optimizing the production capacity of wind energy

2025, vol.17 , no.1, pp. 91-102

Article [2025-01-09]

Authors
Naim Baftiu
Tatjana Atasanova-Pachemska
Abstract

With advances in technology, particularly where environmental implications are a concern, equipment has become increasingly complex and metered. Human activities like emissions and urbanization significantly impact the atmosphere and wind energy generation. This study predicts wind energy generation capacity for 2025–2029 based on data from 2000–2024. Predictive models (e.g., Long Short-Term Memory (LSTM), Facebook Prophet, and SARIMA) are applied to analyze energy trends. Performance results show LSTM provides the best accuracy. The findings enhance reliable wind energy forecasting and improved energy management methods in response to shifting climate dynamics.

Keywords

algorithm, wind energy, production capacity

DOI

https://doi.org/10.59035/NDWZ2144

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Citation of this article:

Naim Baftiu, Tatjana Atasanova-Pachemska. Application of algorithms for forecasting and optimizing the production capacity of wind energy. International Journal on Information Technologies and Security, vol.17 , no.1, 2025, pp. 91-102. https://doi.org/10.59035/NDWZ2144