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Real-time fault detection using recursive density estimation

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Real-time fault detection using recursive density estimation. / Costa, Bruno Sielly Jales; Angelov, Plamen; Guedes, Luiz Affonso .
In: Journal of Control, Automation and Electrical Systems, Vol. 25, No. 4, 08.2014, p. 428-437.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Costa, BSJ, Angelov, P & Guedes, LA 2014, 'Real-time fault detection using recursive density estimation', Journal of Control, Automation and Electrical Systems, vol. 25, no. 4, pp. 428-437. https://doi.org/10.1007/s40313-014-0128-4

APA

Costa, B. S. J., Angelov, P., & Guedes, L. A. (2014). Real-time fault detection using recursive density estimation. Journal of Control, Automation and Electrical Systems, 25(4), 428-437. https://doi.org/10.1007/s40313-014-0128-4

Vancouver

Costa BSJ, Angelov P, Guedes LA. Real-time fault detection using recursive density estimation. Journal of Control, Automation and Electrical Systems. 2014 Aug;25(4):428-437. doi: 10.1007/s40313-014-0128-4

Author

Costa, Bruno Sielly Jales ; Angelov, Plamen ; Guedes, Luiz Affonso . / Real-time fault detection using recursive density estimation. In: Journal of Control, Automation and Electrical Systems. 2014 ; Vol. 25, No. 4. pp. 428-437.

Bibtex

@article{4dd230fdee764443a10b99b0f40d61d2,
title = "Real-time fault detection using recursive density estimation",
abstract = "Applications of fault detection techniques in industrial environments are increasing in order to improve the operational safety, as well as to reduce the costs relatedto unscheduled stoppages. Although there are numerous proposals in the literature about fault detection techniques, most of the approaches demand extensive computational effort or even require too many thresholds or problem-specific parameters to be predefined in advance, impairing their use inreal-time applications. Aiming to overcome these problems, we propose in this paper an approach for real-time fault detection of industrial plants based on the analysis of the control and error signals, using recursive density estimation. Our proposed approach is based on the concept of the density in the data space, which is not the same as probability density function, but is a very useful measure for abnormality/outliers detection. The density can be calculated recursively, which makes it suitable for real-time environments. We define a criterion for density drop integral/sum, which is used as a problem- and user-insensitive (automatic) threshold to identify the faults/anomalies. In order to validate our proposal, we present experimental results from a level control laboratoryprocess, where control and error signals are used as features for the fault detection, but the approach is generic and the number of features can be significant due to the computationally lean methodology, since covariance or more complex calculations are not required. The obtained results are encouraging when compared with the traditional statistical approach.",
keywords = "Fault detection, recursive density estimation, Statistical analysis",
author = "Costa, {Bruno Sielly Jales} and Plamen Angelov and Guedes, {Luiz Affonso}",
year = "2014",
month = aug,
doi = "10.1007/s40313-014-0128-4",
language = "English",
volume = "25",
pages = "428--437",
journal = "Journal of Control, Automation and Electrical Systems",
issn = "2195-3880",
publisher = "Springer Science + Business Media",
number = "4",

}

RIS

TY - JOUR

T1 - Real-time fault detection using recursive density estimation

AU - Costa, Bruno Sielly Jales

AU - Angelov, Plamen

AU - Guedes, Luiz Affonso

PY - 2014/8

Y1 - 2014/8

N2 - Applications of fault detection techniques in industrial environments are increasing in order to improve the operational safety, as well as to reduce the costs relatedto unscheduled stoppages. Although there are numerous proposals in the literature about fault detection techniques, most of the approaches demand extensive computational effort or even require too many thresholds or problem-specific parameters to be predefined in advance, impairing their use inreal-time applications. Aiming to overcome these problems, we propose in this paper an approach for real-time fault detection of industrial plants based on the analysis of the control and error signals, using recursive density estimation. Our proposed approach is based on the concept of the density in the data space, which is not the same as probability density function, but is a very useful measure for abnormality/outliers detection. The density can be calculated recursively, which makes it suitable for real-time environments. We define a criterion for density drop integral/sum, which is used as a problem- and user-insensitive (automatic) threshold to identify the faults/anomalies. In order to validate our proposal, we present experimental results from a level control laboratoryprocess, where control and error signals are used as features for the fault detection, but the approach is generic and the number of features can be significant due to the computationally lean methodology, since covariance or more complex calculations are not required. The obtained results are encouraging when compared with the traditional statistical approach.

AB - Applications of fault detection techniques in industrial environments are increasing in order to improve the operational safety, as well as to reduce the costs relatedto unscheduled stoppages. Although there are numerous proposals in the literature about fault detection techniques, most of the approaches demand extensive computational effort or even require too many thresholds or problem-specific parameters to be predefined in advance, impairing their use inreal-time applications. Aiming to overcome these problems, we propose in this paper an approach for real-time fault detection of industrial plants based on the analysis of the control and error signals, using recursive density estimation. Our proposed approach is based on the concept of the density in the data space, which is not the same as probability density function, but is a very useful measure for abnormality/outliers detection. The density can be calculated recursively, which makes it suitable for real-time environments. We define a criterion for density drop integral/sum, which is used as a problem- and user-insensitive (automatic) threshold to identify the faults/anomalies. In order to validate our proposal, we present experimental results from a level control laboratoryprocess, where control and error signals are used as features for the fault detection, but the approach is generic and the number of features can be significant due to the computationally lean methodology, since covariance or more complex calculations are not required. The obtained results are encouraging when compared with the traditional statistical approach.

KW - Fault detection

KW - recursive density estimation

KW - Statistical analysis

U2 - 10.1007/s40313-014-0128-4

DO - 10.1007/s40313-014-0128-4

M3 - Journal article

VL - 25

SP - 428

EP - 437

JO - Journal of Control, Automation and Electrical Systems

JF - Journal of Control, Automation and Electrical Systems

SN - 2195-3880

IS - 4

ER -