Emerging Technologies for Improved Plug Load Management Systems: Learning Behavior Algorithms and Automatic and Dynamic Load Detection

Thien-Kim Trenbath, Bennett Doherty, Katie Vrabel, Carly Burke

Research output: Contribution to conferencePaper

Abstract

Plug loads are responsible for a significant portion of the energy consumed in commercial buildings, yet their distributed and ever-changing nature makes them one of the most challenging building end uses to manage. Plug load management systems exist today that utilize smart plugs to meter and control devices at the outlet level, however, their uptake has been relatively slow in part due to the significant labor required for installation and maintenance. Learning behavior algorithms and automatic and dynamic load detection have been identified as two technology areas that could accelerate the adoption of plug load management systems by reducing these labor demands and providing additional energy efficiency and non-energy benefits. Learning behavior algorithms learn occupant behavior and adjust plug load management systems accordingly, allowing for the automatic creation of optimized control schedules. Automatic and dynamic load detection allows a plug load management system to identify devices as they are plugged in to a building and keeps the system up to date as devices are moved throughout a building. In this paper, we present our findings with respect to the current state of these two technologies based on a review of existing research and patents, as well as a series of interviews with companies working in the plug load space. We have found that, as of now, no commercialized solutions exist for these plug load technologies and that more work is needed to bring them to market. In addition, we summarize our findings related to the technology challenges, market barriers, drivers, and opportunities for these technologies moving forward.
Original languageAmerican English
Pages409-424
Number of pages16
StatePublished - 2020
Event2020 ACEEE Summer Study on Energy Efficiency in Buildings -
Duration: 17 Aug 202021 Aug 2020

Conference

Conference2020 ACEEE Summer Study on Energy Efficiency in Buildings
Period17/08/2021/08/20

Bibliographical note

Available from ACEEE: see https://aceee2020.conferencespot.org/event-data

NREL Publication Number

  • NREL/CP-5500-77041

Keywords

  • buildings
  • commercial buildings
  • plug load
  • PPL

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