A Distribution Loads Forecast Methodology Based on Transmission Grid Substations SCADA Data

Affiliation auteursAffiliation ok
TitreA Distribution Loads Forecast Methodology Based on Transmission Grid Substations SCADA Data
Type de publicationConference Paper
Year of Publication2014
AuteursCouraud B, Roche R
Conference Name2014 IEEE INNOVATIVE SMART GRID TECHNOLOGIES - ASIA (ISGT ASIA)
PublisherTenaga Nas; MALAKOFF; Tamco Switchgear Sdn Bhd; IEEE; IEEE Power & Energy Soc
Conference Location345 E 47TH ST, NEW YORK, NY 10017 USA
ISBN Number978-1-4799-1300-8
Mots-clésArtificial Neural Networks, Distribution grid, Load forecasting, Load management, Smart-Grids
Résumé

A smart grid that aims to reduce electrical losses, to favor renewable energies, and to maintain an electric supply of high quality, requires to forecast the location and the quantity of electrical power that will be consumed and produced several days ahead. Thus, short-term load forecasting has to be provided at the distribution level. Most of loads forecasting algorithms are based on bottom-up approach, consisting in years' worth of end-users consumption data, related together by an interpolation function. This paper presents a new top-down algorithm, based on a Similar Day Type method, and allows to compute an accurate short term distribution loads forecast using only SCADA Data from transmission grid substations. This algorithm is evaluated on the RBTS test system with real power consumption data to demonstrate its accuracy. This fast, robust and automatic method does not require years' worth of data nor any consumption data at the end-users level, but only power flow data from primary substations, which makes it implementable rapidly, at a lower cost, and on every grid.