An Improved Pattern Sequence-Based Energy Load Forecast Algorithm Based on Self-Organizing Maps and Artificial Neural Networks
Metadata
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MDPI
Materia
Time series forecasting Clustering Pattern Genetic algorithm Energy
Date
2023-05-10Referencia bibliográfica
Criado-Ramón, D.; Ruiz, L.G.B.; Pegalajar, M.C. An Improved Pattern Sequence-Based Energy Load Forecast Algorithm Based on Self-Organizing Maps and Artificial Neural Networks. Big Data Cogn. Comput. 2023, 7, 92. [https://doi.org/10.3390/bdcc7020092]
Sponsorship
I+D+i FEDER 2020 project B-TIC-42-UGR20 “Consejería de Universidad, Investigación e Innovación de la Junta de Andalucía; Ministerio de Ciencia e Innovación” (Spain) (Grant PID2020-112495RB-C21 funded by MCIN/ AEI /10.13039/501100011033Abstract
Pattern sequence-based models are a type of forecasting algorithm that utilizes clustering
and other techniques to produce easily interpretable predictions faster than traditional machine
learning models. This research focuses on their application in energy demand forecasting and
introduces two significant contributions to the field. Firstly, this study evaluates the use of pattern
sequence-based models with large datasets. Unlike previous works that use only one dataset or
multiple datasets with less than two years of data, this work evaluates the models in three different
public datasets, each containing eleven years of data. Secondly, we propose a new pattern sequencebased
algorithm that uses a genetic algorithm to optimize the number of clusters alongside all
other hyperparameters of the forecasting method, instead of using the Cluster Validity Indices
(CVIs) commonly used in previous proposals. The results indicate that neural networks provide
more accurate results than any pattern sequence-based algorithm and that our proposed algorithm
outperforms other pattern sequence-based algorithms, albeit with a longer training time.