Data-driven approaches are playing an increased role in building automation. This can, in part, be attributed to building operation and energy management system data becoming more readily accessible. A particular application is models to allow predictive control harnessing building energy flexibility, which is of interest to different stakeholders including; energy utilities, aggregators and end-users. Given the possibility of thousands of data features, feature selection becomes a critical part of the model development process. This paper considers various filter, wrapper and embedded methods applied in conjunction with three predictors in addressing the problem of constructing a suitable data-driven model to facilitate predictive control and provision of energy flexibility in a large commercial building. The feature selection algorithms are generally shown to significantly reduce model evaluation time and, in some cases, increase model accuracy. A random forest model with embedded feature selection was found to be the optimal solution in terms of model accuracy.

Feature assessment in data-driven models for unlocking building energy flexibility / Kathirgamanathan, A., DE ROSA, M., Mangina, E., Finn, D.P.. - In: BUILDING SIMULATION CONFERENCE PROCEEDINGS. - ISSN 2522-2708. - 1:(2019), pp. 366-373. (16th International Conference of the International Building Performance Simulation Association, Building Simulation 2019 Rome, Italy 2019).

Feature assessment in data-driven models for unlocking building energy flexibility

Mattia De Rosa;
2019-01-01

Abstract

Data-driven approaches are playing an increased role in building automation. This can, in part, be attributed to building operation and energy management system data becoming more readily accessible. A particular application is models to allow predictive control harnessing building energy flexibility, which is of interest to different stakeholders including; energy utilities, aggregators and end-users. Given the possibility of thousands of data features, feature selection becomes a critical part of the model development process. This paper considers various filter, wrapper and embedded methods applied in conjunction with three predictors in addressing the problem of constructing a suitable data-driven model to facilitate predictive control and provision of energy flexibility in a large commercial building. The feature selection algorithms are generally shown to significantly reduce model evaluation time and, in some cases, increase model accuracy. A random forest model with embedded feature selection was found to be the optimal solution in terms of model accuracy.
2019
Inglese
Building Simulation Conference Proceedings
16th International Conference of the International Building Performance Simulation Association, Building Simulation 2019
1
366
373
8
9781713809418
http://www.ibpsa.org/proceedings/BS2019/BS2019_210591.pdf
International Building Performance Simulation Association
Esperti anonimi
2019
Rome, Italy
Internazionale
Renewable energy resources; Demand side management; Feature selection algorithms
Feature assessment in data-driven models for unlocking building energy flexibility / Kathirgamanathan, A., DE ROSA, M., Mangina, E., Finn, D.P.. - In: BUILDING SIMULATION CONFERENCE PROCEEDINGS. - ISSN 2522-2708. - 1:(2019), pp. 366-373. (16th International Conference of the International Building Performance Simulation Association, Building Simulation 2019 Rome, Italy 2019).
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
Kathirgamanathan, Anjukan; DE ROSA, Mattia; Mangina, Eleni; Finn, Donal P.
273
4
none
info:eu-repo/semantics/conferenceObject
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11388/299906
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