4.5 Article

Building Analytics Tool Deployment at Scale: Benefits, Costs, and Deployment Practices

Journal

ENERGIES
Volume 15, Issue 13, Pages -

Publisher

MDPI
DOI: 10.3390/en15134858

Keywords

building analytics; smart building; energy management; energy information system; fault detection and diagnostics; costs and benefits

Categories

Funding

  1. Assistant Secretary for Energy Efficiency and Renewable Energy, Building Technologies Office, of the U.S. Department of Energy [DEAC02-05CH11231]

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The use of building analytics tools can help buildings achieve energy savings. This paper provides data and cost-benefit information from real-world applications, and summarizes common analytical methods. To maximize the benefits of tool implementation, there is a need for simplified data integration and more efficient processes.
Buildings are becoming more data-rich. Building analytics tools, including energy information systems (EIS) and fault detection and diagnostic (FDD) tools, have emerged to enable building operators to translate large amounts of time-series data into actionable findings to achieve energy and non-energy benefits. To expedite data analytics adoption and facilitate technology innovation, building owners, technology developers, and researchers need reliable cost-benefit data and evidence-based guidance on deployment practices. This paper fulfills these needs with the energy use and survey data from a wide-ranging research and industry partnership program that covers thousands of buildings installed with analytics tools. The paper indicates that after two years of implementation, organizations using FDD tools and EIS tools achieved 9% and 3% median annual energy savings, respectively. The median base cost and annual recurring cost for FDD are USD 0.65 per square meter (m(2)) (USD 0.06 per square foot [ft(2)]) and USD 0.22 per m(2) (USD 0.02 per ft(2)), and are USD 0.11 per m(2) (USD 0.01 per ft(2)) and USD 0.11 per m(2) (USD 0.01 per ft(2)) for EIS. The common metrics and analyses that are used in the tools to support the discovery of energy efficiency measures are summarized in detail. Two best practice examples identified to maximize the benefits of tool implementation are also presented. Opportunities to advance the state of technology include simplified data integration and management, and more efficient processes for acting on analytics outputs. Compared with previous efforts in the literature, the findings presented in this paper demonstrate the effectiveness of building analytics tools with the largest known dataset.

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