Litcius/Paper detail

Estimating energy consumption of residential buildings at scale with drive-by image capture

Wil O. C. Ward, Xinzhou Li, Yuxi Sun, Menglin Dai, Hadi Arbabi, Danielle Densley Tingley, Martin Mayfield

2023Building and Environment27 citationsDOIOpen Access PDF

Abstract

Data-driven approaches to addressing climate change are increasingly becoming a necessary solution to deal with the scope and scale of interventions required to reach net zero. In the UK, housing contributes to over 30% of the national energy consumption, and a massive rollout of retrofit is needed to meet government targets for net zero by 2050. This paper introduces a modular framework for quantifying building features using drive-by image capture and utilising them to estimate energy consumption. The framework is demonstrated on a case study of houses in a UK neighbourhood, showing that it can perform comparatively with gold standard datasets. The paper reflects on the modularity of the proposed framework, potential extensions and applications, and highlights the need for robust data collection in the pursuit of efficient, large-scale interventions.

Topics & Concepts

Modular designScope (computer science)Energy consumptionScale (ratio)Environmental economicsConsumption (sociology)Computer scienceZero-energy buildingArchitectural engineeringEfficient energy useEngineeringEconomicsGeographyProgramming languageElectrical engineeringCartographyOperating systemSocial scienceSociologyBuilding Energy and Comfort OptimizationImpact of Light on Environment and HealthUrban Heat Island Mitigation
Estimating energy consumption of residential buildings at scale with drive-by image capture | Litcius