Tehnički glasnik, Vol. 20 No. 1, 2026.
Izvorni znanstveni članak
https://doi.org/10.31803/tg-20240419205218
GLDM Algorithm for Big Data (SCADA) Wind Speed Modelling
Mostafa Abotaleb
orcid.org/0000-0002-3442-6865
; Engineering School of Digital Technologies, Yugra State University, Khanty-Mansiysk, 628012, Russia
Sažetak
This study enhances wind speed forecasting by implementing the second-order Generalized Least Deviation Method (GLDM), focusing on wind turbines in Turkey. The research aims to improve predictive accuracy and operational efficiency in renewable energy systems through advanced mathematical modeling in meteorology. The GLDM, utilizing a quasilinear recurrence equation, addresses the inherent non-linearity and variability of wind speed data. By applying the method to extensive SCADA data, this study minimizes residuals in nonlinear big data environments, integrating both linear and nonlinear components to refine predictions. A critical aspect of this research is the comparison between the second-order GLDM and traditional forecasting models, including statistical methods and machine learning approaches. The results demonstrate the superior performance of GLDM, as indicated by lower prediction errors and greater accuracy across key metrics. The study also underscores the importance of GLDM coefficients, 𝑎𝑎𝑖𝑖, in improving predictive capabilities. The findings advocate for the adoption of GLDM in wind speed forecasting, highlighting its potential to significantly enhance wind energy management through increased accuracy. This study also sets a precedent for broader applications of advanced mathematical models in environmental science, illustrating the effectiveness of GLDM in optimizing renewable energy resources.
Ključne riječi
atmospheric dynamics; Generalized Least Deviation Method (GLDM); renewable energy optimization; SCADA Data Analysis; statistical model validation; wind speed forecasting; wind turbine efficiency
Hrčak ID:
344751
URI
Datum izdavanja:
13.3.2026.
Posjeta: 354 *