Short-Term Disaggregated Load Forecasting Using a Hybrid Fuzzy ARTMAP and K-means Clustering Model.

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Title: Short-Term Disaggregated Load Forecasting Using a Hybrid Fuzzy ARTMAP and K-means Clustering Model.
Authors: Mota, Camilla Nayara Santos1 (AUTHOR) camilla.mota@unesp.br, da Silva, Reginaldo José1,2 (AUTHOR), Lopes, Mara Lúcia Martins1,2 (AUTHOR)
Source: Energies (19961073). May2026, Vol. 19 Issue 9, p2156. 19p.
Subject Terms: *K-means clustering, *Load forecasting (Electric power systems), *Microgrids, *Energy management, *Artificial neural networks, *Energy consumption forecasting, *Data transformations (Statistics)
Abstract: Accurate short-term load forecasting at disaggregated levels is critical for energy management in microgrids and institutional environments, yet it remains a challenge due to high consumption variability and limited contextual information. This paper proposes a hybrid model that combines Fuzzy ARTMAP neural networks with K-means clustering to improve hourly load forecasting using real data from a university microgrid. The methodology includes key preprocessing steps such as filtering low-load records, removing holidays, interpolating missing values, and applying cyclic encoding to standardize the data into 96 time intervals per day (15-min resolution). For each prediction, the average load profile of the five most recent weekdays is computed and compared to cluster centroids to identify the most similar group, which is then used to train the neural network. Results demonstrate consistent improvements in MAPE, RMSE, and MAE compared to the non-clustered baseline. The model showed robustness to non-stationary behavior and atypical patterns, even when relying solely on timestamp and load data. The proposed strategy outperformed conventional approaches and proved suitable for complex, data-limited environments. [ABSTRACT FROM AUTHOR]
Database: Energy & Power Source
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Abstract:Accurate short-term load forecasting at disaggregated levels is critical for energy management in microgrids and institutional environments, yet it remains a challenge due to high consumption variability and limited contextual information. This paper proposes a hybrid model that combines Fuzzy ARTMAP neural networks with K-means clustering to improve hourly load forecasting using real data from a university microgrid. The methodology includes key preprocessing steps such as filtering low-load records, removing holidays, interpolating missing values, and applying cyclic encoding to standardize the data into 96 time intervals per day (15-min resolution). For each prediction, the average load profile of the five most recent weekdays is computed and compared to cluster centroids to identify the most similar group, which is then used to train the neural network. Results demonstrate consistent improvements in MAPE, RMSE, and MAE compared to the non-clustered baseline. The model showed robustness to non-stationary behavior and atypical patterns, even when relying solely on timestamp and load data. The proposed strategy outperformed conventional approaches and proved suitable for complex, data-limited environments. [ABSTRACT FROM AUTHOR]
ISSN:19961073
DOI:10.3390/en19092156