2018
DOI: 10.3390/en11092208
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Probabilistic Hourly Load Forecasting Using Additive Quantile Regression Models

Abstract: Short-term hourly load forecasting in South Africa using additive quantile regression (AQR) models is discussed in this study. The modelling approach allows for easy interpretability and accounting for residual autocorrelation in the joint modelling of hourly electricity data. A comparative analysis is done using generalised additive models (GAMs). In both modelling frameworks, variable selection is done using least absolute shrinkage and selection operator (Lasso) via hierarchical interactions. Four models co… Show more

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Cited by 18 publications
(19 citation statements)
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“…In this paper, we introduce two extensions of the averaging across calibration windows concept to probabilistic forecasting. The first one is based on Quantile Regression Averaging (QRA) of Nowotarski and Weron [7], which has been found to perform very well in several test cases, including electricity price [3,11,23,24], load [25][26][27] and wind power forecasting [28]. Recall, that QRA involves applying quantile regression [9] to a pool of point forecasts.…”
Section: Computing Probabilistic Forecastsmentioning
confidence: 99%
“…In this paper, we introduce two extensions of the averaging across calibration windows concept to probabilistic forecasting. The first one is based on Quantile Regression Averaging (QRA) of Nowotarski and Weron [7], which has been found to perform very well in several test cases, including electricity price [3,11,23,24], load [25][26][27] and wind power forecasting [28]. Recall, that QRA involves applying quantile regression [9] to a pool of point forecasts.…”
Section: Computing Probabilistic Forecastsmentioning
confidence: 99%
“…The RegPSO algorithm considers the particles in the swarm are very close to each other (premature convergence or stagnation occurs) and initiates the regrouping of the particles when (16) is satisfied. When the stagnation is detected by the condition specified in (16), regrouping of the particles in the swarm is initialized. The regrouping performs in the search space about the center of the global best position, Gbest.…”
Section: B Regrouping Particle Swarm Optimization (Regpso)mentioning
confidence: 99%
“…To obtain them, he proposed an additive non-parametric model whose location, scale and shape parameters were non-linear additive functions of the covariates. Additive models for conditional expectation were proposed by [42,43] and extended to predict individual quantiles by [44,45]. Linear quantile regression models have also been used by [46], for day-ahead and intra-daily markets, to produce probabilistic forecasts of hourly spot prices with the aim of reducing forecast bias and the width of forecast intervals.…”
Section: Introductionmentioning
confidence: 99%