Profile
International Journal of Computer & Software Engineering Volume 3 (2018), Article ID 3:IJCSE-136, 7 pages
https://doi.org/10.15344/2456-4451/2018/136
Research Article
Big Data Mining for Assessing Calibration of Building Energy Models

Joshua R. New1*, Jibonananda Sanyal1, Bob Slattery1, Anthony A. Gehl1, William A. Miller1 and Aaron Garrett2

1Oak Ridge National Laboratory, Oak Ridge, TN 37830, USA
2Wofford College, Spartanburg, SC 29303, USA
Dr. Joshua R. New, Oak Ridge National Laboratory, Oak Ridge, TN 37830, USA; E-mail: newjr@ornl.gov
01 August 2018; 06 September 2018; 08 September 2018
New JR, Sanyal J, Slattery B, Gehl AA, Miller WA, et al. (2018) Big Data Mining for Assessing Calibration of Building Energy Models. Int J Comput Softw Eng 3: 136. doi: https://doi.org/10.15344/2456-4451/2018/136
This research was sponsored by the U.S. Department of Energy’s Building Technologies Office.

Abstract

Residential and commercial buildings in China, India, the United States (US), United Kingdom (UK), and Italy consume 39-45% of each nation's primary energy. Building energy models can be used to automatically optimize the return-on-investment for retrofits to improve a building’s energy efficiency. However, with an average of 3,000 building descriptors necessary to accurately simulate a single building, there is a market need to reduce the transaction cost for creating a more robust model for simulating every building in a city and accurately estimate savings prior to capital expenditures.

We used two of the world’s fastest supercomputers, assembled unique datasets, and developed innovative algorithms for big data mining to assess different methods to create an accurate building energy model. The team has leveraged a total of eight high performance computing resources and 218 servers to analyze the best methods, metrics, and algorithms for creating an accurate building energy model beyond current industry standards necessary for private-sector financing. The project developed the world’s fastest buildings simulator, has completed over 8 million simulations totaling over 300TB, and mined this data with over 130,000 parallel artificial intelligence algorithms. This was used to quantify accuracy of AI-developed calibration algorithms with results that surpass industry standard guidelines and can identify individual building parameters to between 15% and 32% of their actual value.