Publication | Open Access
Short-Term Electric Load Forecasting Using Echo State Networks and PCA Decomposition
163
Citations
43
References
2015
Year
Forecasting MethodologyEngineeringLoad ControlProbabilistic ForecastingData ScienceSystems EngineeringPower SystemsPower System AnalysisElectrical EngineeringEcho State NetworkPca DecompositionPredictive AnalyticsEnergy ForecastingComputer ScienceForecastingEnergy PredictionSignal ProcessingIntelligent ForecastingSmart GridEnergy Management
In this paper, we approach the problem of forecasting a time series (TS) of an electrical load measured on the Azienda Comunale Energia e Ambiente (ACEA) power grid, the company managing the electricity distribution in Rome, Italy, with an echo state network (ESN) considering two different leading times of 10 min and 1 day. We use a standard approach for predicting the load in the next 10 min, while, for a forecast horizon of one day, we represent the data with a high-dimensional multi-variate TS, where the number of variables is equivalent to the quantity of measurements registered in a day. Through the orthogonal transformation returned by PCA decomposition, we reduce the dimensionality of the TS to a lower number k of distinct variables; this allows us to cast the original prediction problem in k different one-step ahead predictions. The overall forecast can be effectively managed by k distinct prediction models, whose outputs are combined together to obtain the final result. We employ a genetic algorithm for tuning the parameters of the ESN and compare its prediction accuracy with a standard autoregressive integrated moving average model.
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