DocumentCode
2998802
Title
Residential electrical demand forecasting in very small scale: An evaluation of forecasting methods
Author
Marinescu, Andrei ; Harris, Colin ; Dusparic, Ivana ; Clarke, Steven ; Cahill, Vinny
Author_Institution
Sch. of Comput. Sci. & Stat., Distrib. Syst. Group, Trinity Coll. Dublin, Dublin, Ireland
fYear
2013
fDate
18-18 May 2013
Firstpage
25
Lastpage
32
Abstract
Applications such as generator scheduling, household smart device scheduling, transmission line overload management and microgrid islanding autonomy all play key roles in the smart grid ecosystem. Management of these applications could benefit from short-term load prediction, which has been successfully achieved on large-scale systems such as national grids. However, the scale of the data for analysis is much smaller, similar to the load of a single transformer, making prediction difficult. This paper examines several prediction approaches for day and week ahead electrical load of a community of houses that are supplied by a common residential transformer, in particular: artificial neural networks; fuzzy logic; auto-regression; auto-regressive moving average; auto-regressive integrated moving average; and wavelet neural networks. In our evaluation, the methods use pre-recorded electrical load data with added weather information. Data is recorded from a smart-meter trial that took place during 2009-2010 in Ireland, which registered individual household consumption for 17 months. Two different scenarios are investigated, one with 90 houses, and another with 230 houses. Results for the two scenarios are compared and the performances of the evaluated prediction methods are discussed.
Keywords
autoregressive moving average processes; load forecasting; neural nets; power engineering computing; smart meters; Ireland; artificial neural networks; autoregressive integrated moving average approach; common residential transformer; day-ahead electrical load; forecasting method evaluation; fuzzy logic; generator scheduling; household consumption; household smart device scheduling; large-scale systems; microgrid islanding autonomy; national grids; pre-recorded electrical load data; residential electrical demand forecasting; short-term load prediction; smart grid ecosystem; smart-meter trial; transmission line overload management; wavelet neural networks; weather information; week-ahead electrical load; Artificial neural networks; Communities; Electricity; Forecasting; Humidity; Training;
fLanguage
English
Publisher
ieee
Conference_Titel
Software Engineering Challenges for the Smart Grid (SE4SG), 2013 2nd International Workshop on
Conference_Location
San Francisco, CA
Type
conf
DOI
10.1109/SE4SG.2013.6596108
Filename
6596108
Link To Document