A High-Granularity Approach to Modeling Energy Consumption and Savings Potential in the U.S. Residential Building Stock: Preprint

Research output: Contribution to conferencePaper

Abstract

Building simulations are increasingly used in various applications related to energy efficient buildings. For individual buildings, applications include: design of new buildings, prediction of retrofit savings, ratings, performance path code compliance and qualification for incentives. Beyond individual building applications, larger scale applications (across the stock of buildings at various scales: national, regional and state) include: codes and standards development, utility program design, regional/state planning, and technology assessments. For these sorts of applications, a set of representative buildings are typically simulated to predict performance of the entire population of buildings. Focusing on the U.S. single-family residential building stock, this paper will describe how multiple data sources for building characteristics are combined into a highly-granular database that preserves the important interdependencies of the characteristics. We will present the sampling technique used to generate a representative set of thousands (up to hundreds of thousands) of building models. We will also present results of detailed calibrations against building stock consumption data.
Original languageAmerican English
Number of pages12
StatePublished - 2022
EventASHRAE and IBPSA-USA SimBuild 2016 Building Performance Modeling Conference - Salt Lake City, Utah
Duration: 8 Aug 201612 Aug 2016

Conference

ConferenceASHRAE and IBPSA-USA SimBuild 2016 Building Performance Modeling Conference
CitySalt Lake City, Utah
Period8/08/1612/08/16

Bibliographical note

See NREL/CP-5500-65753 for paper as published in proceedings

NREL Publication Number

  • NREL/CP-5500-83077

Keywords

  • building stock
  • energy modeling
  • residential

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