An Open-Source Framework for Characterizing Urban Energy Models: Integrating Top-Down and Bottom-Up Methods to Predict Residential Buildings Characteristics: Preprint

Rawad El Kontar, Joseph Robertson, Khanh Nguyen Cu, Alexandra Grayson, Jiazhen Ling, Hanna Sotiropoulos, Tarek Rakha

Research output: Contribution to conferencePaper

Abstract

Bottom-up urban energy models are crucial for understanding current energy use patterns and informing design strategies. However, accurately characterizing these models to represent different communities remains a challenge due to the extensive data needed for simulating existing energy use behavior. This data includes information related to human activities and building characteristics, all of which correlate with socioeconomic factors. To overcome this challenge, we developed an automated framework that utilizes both top-down and bottom-up data, to predict unknown building and occupant characteristics that are needed for more accurate and equitable modeling and analytics. Our framework, integrated into the URBANopt district energy modeling platform, uses statistical data models from ResStock. URBANopt models co-located buildings and neighborhoods. At this scale there are data gaps in building characteristic data, such as materials, insulation, occupancy, income, and energy usage of the buildings. To address this data gap, we use ResStock data, representative at the census tract scale, and develop machine-learning and deeplearning techniques to disaggregate it to individual buildings. By mapping unique occupant, building and economic properties to URBANopt energy models, we gain detailed insights into the variability of building energy use across different neighborhoods. This insight helps deploy technologies for co-located buildings and supports targeted upgrades for communities with unique economic and demographic characteristics, ensuring energy equity. Accurate characterization of energy models allows us to develop equitable strategies tailored to diverse neighborhoods, whether underserved or affluent. Our automated framework streamlines energy modeling and provides a reliable tool for building energy characterization.
Original languageAmerican English
Number of pages19
StatePublished - 2024
EventACEEE Summer Study - Pacific Grove, CA
Duration: 4 Aug 20249 Aug 2024

Conference

ConferenceACEEE Summer Study
CityPacific Grove, CA
Period4/08/249/08/24

NREL Publication Number

  • NREL/CP-5500-90883

Keywords

  • energy modeling
  • energy models characterization
  • Equity A analytics
  • ResStock
  • Urban Energy Modeling
  • URBANopt

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