Bootstrap-LOCI data mining methodology for anomaly detection in buildings energy efficiency

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Bootstrap-LOCI data mining methodology for anomaly detection in buildings energy efficiencyAutor(es)
Fecha
2023-11Cita bibliográfica
Tobar, A., Flores, M., Castillo-Páez, S., Naya, S., Zaragoza, S., & Tarrío-Saavedra, J. (2023). Bootstrap-LOCI data mining methodology for anomaly detection in buildings energy efficiency. Energy Reports, 10, 244-254. https://doi.org/10.1016/J.EGYR.2023.06.025
Resumen
[Abtract]: An automated methodology is proposed to identify anomalies in buildings’ HVAC systems, through
Local Correlation Integral (LOCI) algorithm, improved by Bootstrap to obtain a rule from its score
distribution. It has been performed to solve the case study of anomaly detection for HVAC facilities
maintenance in a clothing store in Panama. It is defined by a dataset composed of 24 daily readings
recorded during 434 days. In each reading, 15 critical quality variables for thermal comfort and
energy efficiency were monitored. For algorithm training, anomalous events recorded by HVAC system
operators are considered. In this stage, the LOCI parameters that best fit the data are estimated, to
obtain a score for each of the observations and then study their distribution by applying Bootstrap
techniques to improve the classification performance. For the algorithm performance evaluation, crossvalidation
is used and from these results, it is compared with two benchmark supervised classification
methods such as Logistic Regression and Support Vector Machines with polynomial kernel. The LOCI
method has been improved by the application of bootstrap resampling, providing estimates of the LOCI
score distribution and a critical value from which we define an anomalous observation. It provides the
best balance between real anomaly detection and prevention of false alarm identification than current
proposals for LOCI.
Palabras clave
LOCI
Anomaly detection
Bootstrap
Energy efficiency
Anomaly detection
Bootstrap
Energy efficiency
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CC BY-NC-ND 4.0 https://creativecommons.org/licenses/by-nc-nd/4.0/
ISSN
2352-4847