Ministerio de Economía y Competitividad (Espanya)
2021-01-05
This paper presents a complete methodology, together with its implementation as a web application, for monitoring smart buildings. The approach uses unfold-Principal Component Analysis (unfold-PCA) as a batch projection method and two statistics, Hotelling’s T-squared (T2) and the squared prediction error (SPE), for alarm generation resulting in two simple control charts independently on the number of variables involved. The method consists of modelling the normal operating conditions of a building (entire building, room or subsystem) with latent variables described expressing the principal components. Thus, the method allows detecting faults and misbehaviour as a deviation of previously mentioned statistics from their statistical thresholds. Once a fault or misbehaviour is detected, the isolation of sensors that mostly contribute to such detection is proposed as a first step for diagnosis. The methodology has been implemented under a SaaS (software as a service) approach to be offered to multiple buildings as an on-line application for facility managers. The application is general enough to be used for monitoring complete buildings, or parts of them, using on-line data. A complete example of use for monitoring the performance of the air handling unit of a lecture theatre is presented as demonstrative example and results are discussed
: This work has been carried out by the research group eXiT (http://exit.udg.edu), awarded with the consolidated research award (SITES group, Ref. 2017 SGR 1551) by the Generalitat de Catalunya. The integration and in pilot tests have been developed within the Innovation Action HIT2GAP, funded by the CE under Horizon 2020, grant number N680708) based on research results obtained by the group within the CROWDSAVING project (funded by the Spanish Research Agency AEI and European FEDER funds, Ref. TIN2016-79726-C2-2-R). The author, Llorenç Burgas, would also like to thank the University of Girona for their support through the competitive grant for doctoral formation IFUdG2016
Article
Versió publicada
peer-reviewed
Anglès
MDPI (Multidisciplinary Digital Publishing Institute)
info:eu-repo/semantics/altIdentifier/doi/10.3390/en14010235
info:eu-repo/semantics/altIdentifier/eissn/1996-1073
MINECO/PE 2017-2019/TIN2016-79726-C2-2-R
info:eu-repo/grantAgreement/EC/H2020/680708/EU/Highly Innovative building control Tools Tackling the energy performance GAP/HIT2GAP
Attribution 4.0 International
http://creativecommons.org/licenses/by/4.0/