Title :
Short-term load forecasting model based on smart metering data: Daily energy prediction using physically based component model structure
Author_Institution :
VTT Tech. Res. Centre of Finland, Espoo, Finland
Abstract :
Performance of smart grids and energy markets depends on the accuracy of forecasted power balances and power flows. This document describes the following approach to predict daily energy consumption of large groups of small customers that have electrical heating and cooling. The model is divided into parallel submodels, such as transfer function models, for differently behaving load types. Each linear transfer function has also physically based input nonlinearities such as saturation defining the heating and cooling ranges, or heat pump coefficient of performance. The submodels and their input nonlinearities were identified one after another in decreasing size order. 13 months of hourly metered data from about 6672 houses were used in the model development and verification. The model was identified from 2664 randomly selected houses. The model is described and its simulations are compared with measured loads. Future verification and development steps are briefly discussed.
Keywords :
load flow; load forecasting; smart meters; smart power grids; transfer functions; watthour meters; component model structure; daily energy prediction; direct load control; heat pump coefficient; load forecasting model; load prediction; power balances flows; simulating daily energy consumption; smart grids; smart metering; time 13 month; time 24 hour; transfer function models; Atmospheric modeling; Data models; Heat pumps; Load modeling; Mathematical model; Predictive models; Temperature measurement; demand response; forecasting loads; smart metering;
Conference_Titel :
Smart Grid Technology, Economics and Policies (SG-TEP), 2012 International Conference on
Conference_Location :
Nuremberg
Print_ISBN :
978-1-4673-5930-6
DOI :
10.1109/SG-TEP.2012.6642386