Enhancing Load Stratification in Power Distribution Systems Through Clustering Algorithms: A Practical Study

  • Williams Mendoza Vitonera (Primer Autor)
  • , Xavier Serrano Guerrero
  • , María Fernanda Cabrera
  • , John Enriquez Loja (Autor de Correspondencia)
  • , Edgar Antonio Barragán Escandón (Último Autor)

Producción científica: Contribución a una revistaArtículorevisión exhaustiva

Resumen

Accurate load profile identification is crucial for effective and sustainable power system planning. This study proposes a characterization methodology based on clustering techniques applied to consumption data from medium- and low-voltage users, as well as distribution transformers from an electric utility. Three algorithms—K-means, DBSCAN (Density-Based Spatial Clustering of Applications with Noise), and Gaussian Mixture Models (GMM)—were implemented and compared in terms of their ability to form representative strata using variables such as observation count, projected energy, load factor (𝐿⁢𝐹), and characteristic power levels. The methodology includes data cleaning, normalization, dimensionality reduction, and quality metric analysis to ensure cluster consistency. Results were benchmarked against a prior study conducted by Empresa Eléctrica Regional Centro Sur C.A. (EERCS). Among the evaluated algorithms, GMM demonstrated superior performance in modeling irregular consumption patterns and probabilistically assigning observations, resulting in more coherent and representative segmentations. The resulting clusters exhibited an average 𝐿⁢𝐹 of 58.82%, indicating balanced demand distribution and operational consistency across the groups. Compared to alternative clustering techniques, GMM demonstrated advantages in capturing heterogeneous consumption patterns, adapting to irregular load behaviors, and identifying emerging user segments such as induction-cooking households. These characteristics arise from its probabilistic nature, which provides greater flexibility in cluster formation and robustness in the presence of variability. Therefore, the findings highlight the suitability of GMM for real-world applications where representativeness, efficiency, and cluster stability are essential. The proposed methodology supports improved transformer sizing, more precise technical loss assessments, and better demand forecasting. Periodic application and integration with predictive models and smart grid technologies are recommended to enhance strategic and operational decision-making, ultimately supporting the transition toward smarter and more resilient power distribution systems.
Idioma originalInglés
Número de artículo5314
Páginas (desde-hasta)1-19
Número de páginas19
PublicaciónEnergies
Volumen18
N.º19
DOI
EstadoPublicada - 9 oct. 2025

Palabras clave

  • Cluster
  • Daily load profiles
  • Load stratification
  • Strata

Huella

Profundice en los temas de investigación de 'Enhancing Load Stratification in Power Distribution Systems Through Clustering Algorithms: A Practical Study'. En conjunto forman una huella única.

Citar esto