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A publicação pode ser exportada nos seguintes formatos: referência da APA (American Psychological Association), referência do IEEE (Institute of Electrical and Electronics Engineers), BibTeX e RIS.

Exportar Referência (APA)
Antunes, A., Jose Barateiro, Mata, J., Tavares de Castro, A. & Cardoso, E. (2023). Automatic Outlier Detection in Sensor Data Used for Structural Health Monitoring. Lisboa. Laboratório Nacional de Engenharia Civil.
Exportar Referência (IEEE)
A. L. Antunes et al.,  Automatic Outlier Detection in Sensor Data Used for Structural Health Monitoring, 1 ed., Lisboa, Laboratório Nacional de Engenharia Civil, 2023
Exportar BibTeX
@book{antunes2023_1732209958640,
	author = "Antunes, A. and Jose Barateiro and Mata, J. and Tavares de Castro, A. and Cardoso, E.",
	title = "",
	year = "2023",
	editor = "",
	volume = "",
	number = "",
	series = "NS 137",
	edition = "1",
	publisher = "Laboratório Nacional de Engenharia Civil",
	address = "Lisboa",
	url = "http://livraria.lnec.pt/php/livro_ficha.php?cod_produc_tirag=5871856.php "
}
Exportar RIS
TY  - BOOK
TI  - Automatic Outlier Detection in Sensor Data Used for Structural Health Monitoring
AU  - Antunes, A.
AU  - Jose Barateiro
AU  - Mata, J.
AU  - Tavares de Castro, A.
AU  - Cardoso, E.
PY  - 2023
CY  - Lisboa
UR  - http://livraria.lnec.pt/php/livro_ficha.php?cod_produc_tirag=5871856.php 
AB  - Structural dam safety control activities are commonly based on visual inspections and monitoring data recorded through different sensors. The sensor data collected is used to create statistical and predictive models. However, this data must be processed and validated beforehand. Outlier detection and treatment is a costly and slow process that can be improved using data mining and machine learning techniques. In a Big Data centered world, outliers appear more often, and without an automated way to detect them, engineers cannot anticipate and act on time. The presented work proposes an approach to identify and treat outliers from sensor data retrieved from an Automated Data Acquisition System (using real datasets from a dam), aiming to improve current baseline methods. Since sensor data is unlabeled, unsupervised methods, such as clustering, must be used to group data and understand which points should be classified as an outlier. A novel approach is presented and evaluated, taking advantage of already validated Manual Data Acquisition System measurements, a clustering algorithm (DBSCAN) and baseline methods. This method can identify and remove most outliers in the datasets used for demonstration.
ER  -