DocumentCode :
2389923
Title :
Improving efficiency and reliability of building systems using machine learning and automated online evaluation
Author :
Wu, Leon ; Kaiser, Gail ; Solomon, David ; Winter, Rebecca ; Boulanger, Albert ; Anderson, Roger
Author_Institution :
Sch. of Eng. & Appl. Sci., Columbia Univ., New York, NY, USA
fYear :
2012
fDate :
4-4 May 2012
Firstpage :
1
Lastpage :
6
Abstract :
A high percentage of newly-constructed commercial office buildings experience energy consumption that exceeds specifications and system failures after being put into use. This problem is even worse for older buildings. We present a new approach, `predictive building energy optimization´, which uses machine learning (ML) and automated online evaluation of historical and real-time building data to improve efficiency and reliability of building operations without requiring large amounts of additional capital investment. Our ML approach uses a predictive model to generate accurate energy demand forecasts and automated analyses that can guide optimization of building operations. In parallel, an automated online evaluation system monitors efficiency at multiple stages in the system workflow and provides building operators with continuous feedback. We implemented a prototype of this application in a large commercial building in Manhattan. Our predictive machine learning model applies Support Vector Regression (SVR) to the building´s historical energy use and temperature and wet-bulb humidity data from the building´s interior and exterior in order to model performance for each day. This predictive model closely approximates actual energy usage values, with some seasonal and occupant-specific variability, and the dependence of the data on day-of-the-week makes the model easily applicable to different types of buildings with minimal adjustment. In parallel, an automated online evaluator monitors the building´s internal and external conditions, control actions and the results of those actions. Intelligent real-time data quality analysis components quickly detect anomalies and automatically transmit feedback to building management, who can then take necessary preventive or corrective actions. Our experiments show that this evaluator is responsive and effective in further ensuring reliable and energy-efficient operation of building systems.
Keywords :
building management systems; embedded systems; energy conservation; failure analysis; investment; learning (artificial intelligence); optimisation; power consumption; regression analysis; reliability; support vector machines; Intelligent real-time data quality analysis components; ML approach; SVR; anomalies detection; application prototype; automated online evaluation system; automated online evaluator monitors; automatic feedback transmission; building external conditions; building internal conditions; building management; building operations efficiency; building operations reliability; building systems energy-efficient operation; capital investment; control actions; energy demand forecasts; energy usage values; newly-constructed commercial office buildings experience energy consumption; occupant-specific variability; older buildings; predictive building energy optimization; predictive machine learning model; real-time building data; support vector regression; system failures; system workflow; wet-bulb humidity data; Buildings; Business; Data models; Meteorology; Predictive models; Reliability; Support vector machines; energy efficiency; green buildings; machine learning; prediction methods; reliability; statistical analysis; support vector machines;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Systems, Applications and Technology Conference (LISAT), 2012 IEEE Long Island
Conference_Location :
Farmingdale, NY
Print_ISBN :
978-1-4577-1342-2
Type :
conf
DOI :
10.1109/LISAT.2012.6223192
Filename :
6223192
Link To Document :
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