Authors
Nour El-Houda Bezzar, Lakhdar Laimeche, Abdallah Meraoumia, Lotfi Houam
Publication date
2022/11/30
Journal
Demonstratio Mathematica
Volume
55
Issue
1
Pages
900-921
Publisher
De Gruyter
Description
Recently, electricity consumption forecasting has attracted much research due to its importance in our daily life as well as in economic activities. This process is seen as one of the ways to manage future electricity needs, including anticipating the supply-demand balance, especially at peak times, and helping the customer make real-time decisions about their consumption. Therefore, based on statistical techniques (ST) and/or artificial intelligence (AI), many forecasting models have been developed in the literature, but unfortunately, in addition to poor choice of the appropriate model, time series datasets were used directly without being seriously analyzed. In this article, we have proposed an efficient electricity consumption prediction model that takes into account the shortcomings mentioned earlier. Therefore, the database was analyzed to address all anomalies such as non-numeric values, aberrant, and …
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