Title :
Short-Term Electric Load Forecasting Using Echo State Networks and PCA Decomposition
Author :
Bianchi, Filippo Maria ; De Santis, Enrico ; Rizzi, Antonello ; Sadeghian, Alireza
Author_Institution :
Dept. of Inf. EngineeringElectronics, & Telecommun., Sapienza Univ. of Rome, Rome, Italy
fDate :
7/7/1905 12:00:00 AM
Abstract :
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.
Keywords :
distribution networks; load forecasting; power grids; principal component analysis; time series; ACEA power grid; Azienda Comunale Energia e Ambiente; ESN; Italy; PCA decomposition; Rome; autoregressive integrated moving average model; echo state networks; electric load forecasting; electricity distribution; time series; Forecasting; Genetic algorithms; Load management; Predictive models; Smart grids; Time series analysis; Dimensionality Reduction; Echo State Network; Electric Load Prediction; Forecasting; Genetic Algorithm; PCA; Smart Grid; Time-Series; Time-series; dimensionality reduction; echo state network; electric load prediction; forecasting; genetic algorithm; smart grid;
Journal_Title :
Access, IEEE
DOI :
10.1109/ACCESS.2015.2485943