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A geospatial clustering algorithm and its integration into a techno-economic rural electrification planning model

M. Torres-Pérez, J. Domínguez, L. Arribas, J. Amador, P. Ciller, A. González-García

Engineering Applications of Artificial Intelligence Vol. 137, nº. Part B, pp. 109249-1 - 109249-22

Summary:

Rural electrification planning is a complex process requiring careful consideration of various factors to ensure efficient and cost-effective solutions. Existing clustering methods in academic literature often fall short in this context, as they typically do not account for geographical barriers, restricted areas, and key electrical and geospatial metrics simultaneously. This can result in clusters that do not meet the energy needs of the study region, potentially causing inefficient energy distribution and increased costs. This study presents a novel clustering algorithm, RElect_MGEC (Rural Electrification Microgrid and Grid Extension Clustering), specifically designed for techno-economic planning in rural areas. The RElect_MGEC algorithm combines density-based and graph clustering methods to group households while considering constraints imposed by geographic barriers, electricity power, and distance from the generation center. The algorithm was implemented within the IntiGIS (Geographic Information System for Rural Electrification) model and evaluated using a real-world dataset of 10,995 unelectrified households in rural Yoro, Honduras. The evaluation involved comparisons with established clustering algorithms, focusing on metrics such as the number of valid clusters, Levelized Cost of Electricity (LCOE), and execution time. The results demonstrate the algorithm's effectiveness in scenarios with equal and varying demands, highlighting its robustness, flexibility, and ability to achieve cost savings within shorter timeframes. Additionally, this approach enables the assessment of distribution infrastructures, such as microgrids and grid extensions, ensuring an effective power generation and distribution. The integration of the RElect_MGEC algorithm into IntiGIS results in an enhanced model that enables a comprehensive and informed decision-making process for rural electrification planning.


Spanish layman's summary:

El algoritmo RElect_MGEC es un nuevo método de agrupamiento para la planificación de electrificación rural, considerando restricciones geográficas y eléctricas. Integrado en IntiGIS y probado en Honduras, mejora la eficiencia y distribución de energía, superando métodos existentes con ahorro de costos.


English layman's summary:

The RElect_MGEC algorithm is a novel clustering method for rural electrification planning, addressing geographical and electrical constraints. Integrated into IntiGIS and tested in Honduras, it outperforms existing methods by improving cost-efficiency and decision-making for microgrid and grid extensions, ensuring better energy distribution.


Keywords: Constrained clustering; Density-based clustering; Graph-based clustering; Rural electrification; Geospatial analysis; Techno-economic software tool


JCR Impact Factor and WoS quartile: 7,500 - Q1 (2023)

DOI reference: DOI icon https://doi.org/10.1016/j.engappai.2024.109249

Published on paper: November 2024.

Published on-line: September 2024.



Citation:
M. Torres-Pérez, J. Domínguez, L. Arribas, J. Amador, P. Ciller, A. González-García, A geospatial clustering algorithm and its integration into a techno-economic rural electrification planning model. Engineering Applications of Artificial Intelligence. Vol. 137, nº. Part B, pp. 109249-1 - 109249-22, November 2024. [Online: September 2024]


    Research topics:
  • Universal energy access and rural electrification
  • Planning and operation of DER