Litcius/Paper detail

Bayesian calibration at the urban scale: a case study on a large residential heating demand application in Amsterdam

Cheng-Kai Wang, Simon H. Tindemans, Clayton Miller, Giorgio Agugiaro, Jantien Stoter

2020Journal of Building Performance Simulation57 citationsDOIOpen Access PDF

Abstract

A bottom-up building energy modelling at the urban scale based on Geographic Information System and semantic 3D city models can provide quantitative insights to tackle critical urban energy challenges. Nevertheless, incomplete information is a common obstacle to produce reliable modelling results. The residential building heating demand simulation performance gap caused by input uncertainties is discussed in this study. We present a data-driven urban scale energy modelling framework from open-source data harmonization, sensitivity analysis, heating demand simulation at the postcode level to Bayesian calibration with six years of training data and two years of validation data. Comparing the baseline and the calibrated simulation results, the averaged absolute percentage errors of energy use intensity in the study area have significantly improved from 25.0% to 8.3% and from 19.9% to 7.7% in two validation years, while CVRMSE2016=11.5% and CVRMSE2017=13.2%. The overall methodology is extendable to other urban contexts.

Topics & Concepts

CalibrationScale (ratio)Building energy simulationSensitivity (control systems)Bayesian probabilityObstacleEnvironmental scienceComputer science3D city modelsBaseline (sea)Geographic information systemEnergy (signal processing)SimulationStatisticsData miningEngineeringGeographyCartographyMathematicsEnergy performanceArtificial intelligenceGeologyElectronic engineeringArchaeologyOceanographyVisualizationBuilding Energy and Comfort OptimizationUrban Heat Island MitigationWind and Air Flow Studies