Intelligent Energy Optimizer for Residential Buildings

Niraj Kunwar, Mahabir Bhandari, Kuldeep Kurte, Anthony C. Gehl, Bipin Shah, Logesh Janarthanan

Research output: Book/ReportCommissioned report

Abstract

Demand-side management in the buildings is essential for meeting grid flexibility needs in a highly renewable energy scenario. Appliance load monitoring helps decision making for demand-side management by providing the information on operation status/power consumption from different appliances in the buildings. Nonintrusive load monitoring (NILM) is an attractive option for appliance load monitoring using because it has lower cost for sensors and helps mitigate privacy concerns. In this study, the team used an event detection technique followed by two different methods for event classification. The results from k-means clustering showed that the events from a single appliance are often distributed in multiple clusters. Thus, the unsupervised method of NILM using k-means clustering used in this study was not very suitable for load disaggregation. The results from NILM showed that the F1 score for event classification was 0.77 for a heat pump water heater and very low for other appliances using the rule-based classification.
Original languageEnglish
Place of PublicationUnited States
DOIs
StatePublished - 2022

Keywords

  • 32 ENERGY CONSERVATION, CONSUMPTION, AND UTILIZATION
  • 24 POWER TRANSMISSION AND DISTRIBUTION

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