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Veuillez utiliser cette adresse pour citer ce document : https://hdl.handle.net/20.500.12177/12024
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dc.contributor.advisorTchinda, Réné-
dc.contributor.authorNzoko Tayo, Dieudonné-
dc.date.accessioned2024-07-01T11:31:00Z-
dc.date.available2024-07-01T11:31:00Z-
dc.date.issued2023-
dc.identifier.urihttps://hdl.handle.net/20.500.12177/12024-
dc.description.abstractThe main ob jective of this thesis is to build models for forecasting and efficient management of the electrical energy available in Cameroon. With this in mind, we have proposed optimal numerical models based on hybrid methods of artificial intelligence and methods of econometrics. For the long-term forecasts, the vec- tor error correction model (VECM), the exponential smoothing of Hol (HES), the fuzzy logic (FLS) and the hybrid model (VECM-HES) were used. In the context of short-term forecasting, multiple linear regression (MLR) models, Hol exponential smoothing (HES), artificial neural networks (ANN), deep neural networks (CNN and DNN) as well as the hybrid model (ANN-LRM-HES) were used. A compa- rative study of the different results obtained by the hybrid models VECM-HES and ANN-LRM-HES show that these models display a relatively low margin of error, compared to the margins of error obtained by similar models existing in the literature on the sub ject. We therefore conclude that these proposed hybrid models are better suited for our forecasting calculations. In continuation for the long-term forecasts, the results obtained also allow us to conclude that in the same way as the evolution of the population, the consumption of electric energy has an increasing tendency. According to our forecasts, it goes from 7169,031 GWh in 2020 to 8134,772 GWh in 2024, an increase of 965,741 GWh in five years.fr_FR
dc.format.extent204fr_FR
dc.publisherUniversité de Yaoundé 1fr_FR
dc.subjectElectricityfr_FR
dc.subjectLong term forecastfr_FR
dc.subjectShort-term forecastfr_FR
dc.subjectHybrid modelfr_FR
dc.subjectFuzzy logicfr_FR
dc.titlePrévision de la demande en énergie électrique au Cameroun par les méthodes de régressions et des reseaux de neurone artificielfr_FR
dc.typeThesis-
Collection(s) :Thèses soutenues

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