Title of article :
Functional time series approach for forecasting very short-term electricity demand
Author/Authors :
Han Lin Shang، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
This empirical paper presents a number of functional modelling and forecasting methods for predicting
very short-term (such as minute-by-minute) electricity demand. The proposed functional methods slice a
seasonal univariate time series (TS) into a TS of curves; reduce the dimensionality of curves by applying
functional principal component analysis before using a univariate TS forecasting method and regression
techniques. As data points in the daily electricity demand are sequentially observed, a forecast updating
method can greatly improve the accuracy of point forecasts. Moreover, we present a non-parametric bootstrap
approach to construct and update prediction intervals, and compare the point and interval forecast
accuracy with some naive benchmark methods. The proposed methods are illustrated by the half-hourly
electricity demand from Monday to Sunday in South Australia.
Keywords :
functional principal component analysis , Multivariate time series , Ordinary least-squaresregression , roughness penalty , Seasonal time series , penalised least-squares regression
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS