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  1. Pubblicazioni

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

Contributo in Atti di convegno
Data di Pubblicazione:
2019
Citazione:
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).
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.
Tipologia CRIS:
4.1 Contributo in Atti di convegno
Keywords:
Renewable energy resources; Demand side management; Feature selection algorithms
Elenco autori:
Kathirgamanathan, Anjukan; DE ROSA, Mattia; Mangina, Eleni; Finn, Donal P.
Link alla scheda completa:
https://iris.uniss.it/handle/11388/299906
Titolo del libro:
Building Simulation Conference Proceedings
Pubblicato in:
BUILDING SIMULATION CONFERENCE PROCEEDINGS
Journal
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URL

http://www.ibpsa.org/proceedings/BS2019/BS2019_210591.pdf
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