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GECCO 2013 Industrial Competition. Computer Engineering Lab, School of Electrical and IT Engineering. Farzad Noorian. GECCO 2013. Genetic and Evolutionary Computation Conference Organized by ACM SIGEVO GECCO Industrial challenge: http ://www.spotseven.de/gecco-challenge /
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GECCO 2013 Industrial Competition Computer Engineering Lab, School of Electrical and IT Engineering FarzadNoorian
GECCO 2013 • Genetic and Evolutionary Computation Conference • Organized by ACM SIGEVO • GECCO Industrial challenge: • http://www.spotseven.de/gecco-challenge/ • sponsored by GreenPocketGmbH
Introduction • About the Competition • Pre-processing • Features • Training and Cross-validation • Results
The Competition • Real room climate time series • Outside temperature as an additional input • Irregular time-series • Very noisy
Preprocessing • From original data
Preprocessing • Outliers were removed
Preprocessing • A weighted moving average with a small window
Preprocessing • Regularized using linear approximation
Preprocessing • Only values at hourly boundaries were used.
Features • Only the outside temperature was given. • No outside humidity. • Human perception based on both.
Features • Publicly available data from Weather Underground™ for Köln • Temperature • Humidity • Dew Point
Features for Temperature Forecasting • Weekday seasonality → Only weekdays used • Seasonality removed only from indoor temperature • A window of last n hours room temperatures • A window of previous m and next m dew points from Wunderground
Features for Humidity Forecasting • A window of last n hours • m previous and m next external humidity from Wunderground • Open, Low, High and Close of that days humidity • No seasonality or data filtering
Learner • Support Vector Machines • With Radial Kernel • Advantages of SVMs • Efficiently trained • Unique global optima
Cross-validation • Using R package caret • Cross validation for features and parameters • Using from a 4-day window to 15-day window to train • Validating using next 3 available days • Final training on all data
Final Results • Prediction in hourly, linearly approximated to 10 minutes
Questions? • Feel free to email: farzad.noorian@sydney.edu.au