Enhancing Load Prediction Accuracy using Optimized Support Vector Regression Models

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Abdulsemiu Olawuyi https://orcid.org/0000-0002-7583-5526
Titus Ajewole
Muyideen Lawal https://orcid.org/0000-0001-8705-0569
Tolulope Awofolaju

Keywords

Support vector regression, hyperparameters, Bayesian optimization, load prediction, sliding window

Abstract

This paper investigates the effect of Support Vector Regression hyperparameters optimization on electrical load prediction. Accurate and robust load prediction helps policy makers in the energy sector to make inform decision and reduce losses. To achieve this, Bayesian optimization technique was employed for the hyperparameters optimization which are then used for the load prediction. The hyperparameters are the regularization parameters and the epsilon. In addition, the effects of sliding window during the load prediction were also evaluated. The sliding window values were varied from 1 to 5. The results showed that the sliding window of 1 had the optimized hyperparameters with the best performing evaluation metrics of 0.01912 and 0.09493 for MSE and MAE respectively.

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