DocumentCode :
3729741
Title :
Residential precinct demand forecasting using optimised solar generation and battery storage
Author :
Steven Percy;Mohammad Aldeen;Adam Berry
Author_Institution :
School of Engineering, The University of Melbourne, Melbourne 3010 Victoria, Australia
fYear :
2015
Firstpage :
1
Lastpage :
5
Abstract :
In the future there will be an increased uptake of solar and battery systems in the residential sector, driven by falling battery costs and increasing electricity tariffs. The increased uptake means we need new methods to forecast electricity demand when considering these technologies. This paper has achieved this goal using a two stage model. Stage 1: A machine learning demand model has been created applying adaptive boost to a regression tree algorithm, achieving an RMS error of 0.25. The model has been used to simulate the individual base-demand for 50 homes in a precinct. Stage 2: A linear programing model has been developed that determines the impact of solar and battery storage on that base demand, and optimizes the system capacities for each home in the precinct while limiting emissions. This model shows reducing emissions by 50% through solar and battery storage cost 2.6% more than the grid only scenario.
Keywords :
"Batteries","Load modeling","Adaptation models","Predictive models","Data models","Machine learning algorithms","Demand forecasting"
Publisher :
ieee
Conference_Titel :
Power and Energy Engineering Conference (APPEEC), 2015 IEEE PES Asia-Pacific
Type :
conf
DOI :
10.1109/APPEEC.2015.7381039
Filename :
7381039
Link To Document :
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