Comparative analysis of prediction algorithms for building energy usage prediction at an urban scale

Author:

Ali Usman,Shamsi Mohammad Haris,Nabeel Muhammad,Hoare Cathal,Alshehri Fawaz,Mangina Eleni,Odonnell James

Abstract

Abstract Strategic planning for efficient and sustainable urban environments necessitates identification of scalable energy saving opportunities for the buildings sector. A possible resolution is the analysis of building energy use data at urban scale, although the available data is often sparse, inconsistent, diverse and heterogeneous in nature. Over the past decades, predictive modeling using sparse data has aided with the forecasting of building energy use. However, most studies of energy use prediction focus on individual buildings. This paper proposes the integration of building archetypes simulation, parametric analysis, and machine learning techniques as a solution to accurately predict individual building energy use at an urban level. The aim of the research described in this paper is to achieve accurate prediction of building energy performance, which will allow stakeholders, such as energy policymakers and urban planners, to make informed decisions when planning retrofit measures at large scale. The methodology generates synthetic building data for training the predictive model and predicts building energy use at urban scale with limited resources. The experimentation focuses on Dublin city through the development of synthetic building dataset using parametric analysis on previously identified key variables of two distinct building archetypes. Having compared different prediction algorithms, we show that the Gradient Boosted Trees algorithm gives a better prediction when compared to other algorithms.

Publisher

IOP Publishing

Subject

General Physics and Astronomy

Reference8 articles.

1. 2018/844 of 30 May 2018 amending Directive 2010/31/EU on the energy performance of buildings and Directive 2012/27/EU on energy efficiency

2. A review of data-driven building energy consumption prediction studies;Amasyali;Renewable and Sustainable Energy Reviews,2018

3. Definition of a useful minimal-set of accurately-specified input data for building energy performance simulation;Egan;Energy and Buildings,2018

4. TABULA building typologies in 20 European countries—Making energy-related features of residential building stocks comparable;Loga;Energy and Buildings,2016

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