LAPSE:2023.19976
Published Article

LAPSE:2023.19976
Baseline Energy Use Modeling and Characterization in Tertiary Buildings Using an Interpretable Bayesian Linear Regression Methodology
March 9, 2023
Abstract
Interpretable and scalable data-driven methodologies providing high granularity baseline predictions of energy use in buildings are essential for the accurate measurement and verification of energy renovation projects and have the potential of unlocking considerable investments in energy efficiency worldwide. Bayesian methodologies have been demonstrated to hold great potential for energy baseline modelling, by providing richer and more valuable information using intuitive mathematics. This paper proposes a Bayesian linear regression methodology for hourly baseline energy consumption predictions in commercial buildings. The methodology also enables a detailed characterization of the analyzed buildings through the detection of typical electricity usage profiles and the estimation of the weather dependence. The effects of different Bayesian model specifications were tested, including the use of different prior distributions, predictor variables, posterior estimation techniques, and the implementation of multilevel regression. The approach was tested on an open dataset containing two years of electricity meter readings at an hourly frequency for 1578 non-residential buildings. The best performing model specifications were identified, among the ones tested. The results show that the methodology developed is able to provide accurate high granularity baseline predictions, while also being intuitive and explainable. The building consumption characterization provides actionable information that can be used by energy managers to improve the performance of the analyzed facilities.
Interpretable and scalable data-driven methodologies providing high granularity baseline predictions of energy use in buildings are essential for the accurate measurement and verification of energy renovation projects and have the potential of unlocking considerable investments in energy efficiency worldwide. Bayesian methodologies have been demonstrated to hold great potential for energy baseline modelling, by providing richer and more valuable information using intuitive mathematics. This paper proposes a Bayesian linear regression methodology for hourly baseline energy consumption predictions in commercial buildings. The methodology also enables a detailed characterization of the analyzed buildings through the detection of typical electricity usage profiles and the estimation of the weather dependence. The effects of different Bayesian model specifications were tested, including the use of different prior distributions, predictor variables, posterior estimation techniques, and the implementation of multilevel regression. The approach was tested on an open dataset containing two years of electricity meter readings at an hourly frequency for 1578 non-residential buildings. The best performing model specifications were identified, among the ones tested. The results show that the methodology developed is able to provide accurate high granularity baseline predictions, while also being intuitive and explainable. The building consumption characterization provides actionable information that can be used by energy managers to improve the performance of the analyzed facilities.
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Keywords
baseline, Bayesian, buildings, efficiency, Energy, probabilistic, savings, uncertainty
Subject
Suggested Citation
Grillone B, Mor G, Danov S, Cipriano J, Lazzari F, Sumper A. Baseline Energy Use Modeling and Characterization in Tertiary Buildings Using an Interpretable Bayesian Linear Regression Methodology. (2023). LAPSE:2023.19976
Author Affiliations
Grillone B: Building Energy and Environment Group, Centre Internacional de Mètodes Numèrics a l’Enginyeria, GAIA Building (TR14), Rambla Sant Nebridi 22, 08222 Terrassa, Spain [ORCID]
Mor G: Building Energy and Environment Group, Centre Internacional de Mètodes Numèrics a l’Enginyeria, CIMNE-Lleida, Pere de Cabrera 16, Office 2G, 25001 Lleida, Spain
Danov S: Building Energy and Environment Group, Centre Internacional de Mètodes Numèrics a l’Enginyeria, GAIA Building (TR14), Rambla Sant Nebridi 22, 08222 Terrassa, Spain
Cipriano J: Building Energy and Environment Group, Centre Internacional de Mètodes Numèrics a l’Enginyeria, CIMNE-Lleida, Pere de Cabrera 16, Office 2G, 25001 Lleida, Spain; Applied Physics Section of the Environmental Science Department, University of Lleida, Ja
Lazzari F: Building Energy and Environment Group, Centre Internacional de Mètodes Numèrics a l’Enginyeria, CIMNE-Lleida, Pere de Cabrera 16, Office 2G, 25001 Lleida, Spain
Sumper A: Centre d’Innovació Tecnològica en Convertidors Estàtics i Accionaments (CITCEA-UPC), Departament d’Enginyeria Elèctrica, ETS d’Enginyeria Industrial de Barcelona, Universitat Politècnica de Catalunya, 08028 Barcelona, Spain [ORCID]
Mor G: Building Energy and Environment Group, Centre Internacional de Mètodes Numèrics a l’Enginyeria, CIMNE-Lleida, Pere de Cabrera 16, Office 2G, 25001 Lleida, Spain
Danov S: Building Energy and Environment Group, Centre Internacional de Mètodes Numèrics a l’Enginyeria, GAIA Building (TR14), Rambla Sant Nebridi 22, 08222 Terrassa, Spain
Cipriano J: Building Energy and Environment Group, Centre Internacional de Mètodes Numèrics a l’Enginyeria, CIMNE-Lleida, Pere de Cabrera 16, Office 2G, 25001 Lleida, Spain; Applied Physics Section of the Environmental Science Department, University of Lleida, Ja
Lazzari F: Building Energy and Environment Group, Centre Internacional de Mètodes Numèrics a l’Enginyeria, CIMNE-Lleida, Pere de Cabrera 16, Office 2G, 25001 Lleida, Spain
Sumper A: Centre d’Innovació Tecnològica en Convertidors Estàtics i Accionaments (CITCEA-UPC), Departament d’Enginyeria Elèctrica, ETS d’Enginyeria Industrial de Barcelona, Universitat Politècnica de Catalunya, 08028 Barcelona, Spain [ORCID]
Journal Name
Energies
Volume
14
Issue
17
First Page
5556
Year
2021
Publication Date
2021-09-06
ISSN
1996-1073
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Original Submission
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PII: en14175556, Publication Type: Journal Article
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LAPSE:2023.19976
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https://doi.org/10.3390/en14175556
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