Abstract
An accurate building energy forecasting model is a key component for real-Time and advanced control of building energy system and building-To-grid integration. With the fast deployment and advancement of building automation systems, data are collected by hundreds and sometimes thousands of sensors every few minutes in buildings, which provide great potential for data-driven building energy forecasting. To develop building energy forecasting models from a large number of potential inputs, feature selection is a critical procedure to ensure model accuracy and computation efficiency. Though the theory of feature selection is well developed in statistics and machine learning fields, it is not well studied in the application of building energy modeling. In this paper, a feature selection framework proposed in an earlier study is examined using a real campus building in Philadelphia. This feature selection framework combines domain knowledge and statistical methods and is developed for short-Term data-driven building energy forecasting. In this case study, the feasibilities of using this feature selection framework in developing whole building energy forecasting model and chiller energy forecasting model are studied. Results show that, for both whole building and chiller energy forecasting applications, the model with systematic feature selection process presents better performance (in terms of cross validation error of forecasted output) than other models including that with conventional inputs and that uses only single feature selection technique.
Original language | English |
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Title of host publication | Vibration in Mechanical Systems; Modeling and Validation; Dynamic Systems and Control Education; Vibrations and Control of Systems; Modeling and Estimation for Vehicle Safety and Integrity; Modeling and Control of IC Engines and Aftertreatment Systems;Unmanned Aerial Vehicles (UAVs) and Their Applications; Dynamics and Control of Renewable Energy Systems; Energy Harvesting; Control of Smart Buildings and Microgrids; Energy Systems |
Publisher | American Society of Mechanical Engineers |
ISBN (Electronic) | 9780791858295 |
DOIs | |
State | Published - 2017 |
Event | ASME 2017 Dynamic Systems and Control Conference, DSCC 2017 - Tysons, United States Duration: Oct 11 2017 → Oct 13 2017 |
Publication series
Name | ASME 2017 Dynamic Systems and Control Conference, DSCC 2017 |
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Volume | 3 |
Conference
Conference | ASME 2017 Dynamic Systems and Control Conference, DSCC 2017 |
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Country/Territory | United States |
City | Tysons |
Period | 10/11/17 → 10/13/17 |
Funding
This research was supported by project: CPS: Synergy: Collaborative Research: GOALI: SMARTER - Smart Manager for Adaptive and Real-Time decisions in building clustERs. It was also supported by U.S. Department of Energy’s Building Grid Integration Research and Development Innovators Program: VOLTTRON Compatible Short-term Transactive Load Control Strategy.