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Fully unsupervised fault detection and identification based on recursive density estimation and self-evolving cloud-based classifier

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Fully unsupervised fault detection and identification based on recursive density estimation and self-evolving cloud-based classifier. / Costa, Bruno Sielly Jales; Angelov, Plamen; Guedes, Luiz Affonso .
In: Neurocomputing, Vol. 150, No. A, 20.02.2015, p. 289-303.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

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Costa BSJ, Angelov P, Guedes LA. Fully unsupervised fault detection and identification based on recursive density estimation and self-evolving cloud-based classifier. Neurocomputing. 2015 Feb 20;150(A):289-303. doi: 10.1016/j.neucom.2014.05.086

Author

Costa, Bruno Sielly Jales ; Angelov, Plamen ; Guedes, Luiz Affonso . / Fully unsupervised fault detection and identification based on recursive density estimation and self-evolving cloud-based classifier. In: Neurocomputing. 2015 ; Vol. 150, No. A. pp. 289-303.

Bibtex

@article{87bd964adf154384acf5aabbc9606161,
title = "Fully unsupervised fault detection and identification based on recursive density estimation and self-evolving cloud-based classifier",
abstract = "In this paper, we propose a two-stage algorithm for real-time fault detection and identification of industrial plants. Our proposal is based on the analysis of selected features using recursive density estimation and a new evolving classifier algorithm. More specifically, the proposed approach for the detection stage is based on the concept of the density in the data space, which is not the same as the probability density function, but is a very useful measure for abnormality/outliers detection. This density can be expressed by a Cauchy function and can be calculated recursively, which makes it memory and computational power efficient and, therefore, applicable to on-line applications. The identification/diagnosis stage is based on a self-developing (evolving) fuzzy-rule-based classifier system proposed in this paper, called the AutoClass. An important property of AutoClass is that it can start learning “from scratch”. Not only do the fuzzy rules not need to be pre-specified, but neither do the number of classes for AutoClass (the number may grow, with new class labels being added by the online learning process), in a fully unsupervised manner. In the event that an initial rule base exists, AutoClass can evolve/develop it further based on the newly arrived faulty state data. In order to validate our proposal, we present experimental results from a level control didactic process, where control and error signals are used as features for the fault detection and identification system, 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, as well as storage of old data, are not required. The obtained results are significantly better than the traditional approaches.",
keywords = "Fault detection, Fault diagnosis, Fault identification, Recursive density estimation, Evolving classifiers, Autonomous learning, STATISTICAL PROCESS-CONTROL, ARTIFICIAL IMMUNE-SYSTEM, REAL-TIME, NONLINEAR-SYSTEMS, FUZZY IDENTIFICATION, DIAGNOSIS, MODEL, ALGORITHMS, STREAMS, DESIGN",
author = "Costa, {Bruno Sielly Jales} and Plamen Angelov and Guedes, {Luiz Affonso}",
year = "2015",
month = feb,
day = "20",
doi = "10.1016/j.neucom.2014.05.086",
language = "English",
volume = "150",
pages = "289--303",
journal = "Neurocomputing",
issn = "0925-2312",
publisher = "Elsevier Science B.V.",
number = "A",

}

RIS

TY - JOUR

T1 - Fully unsupervised fault detection and identification based on recursive density estimation and self-evolving cloud-based classifier

AU - Costa, Bruno Sielly Jales

AU - Angelov, Plamen

AU - Guedes, Luiz Affonso

PY - 2015/2/20

Y1 - 2015/2/20

N2 - In this paper, we propose a two-stage algorithm for real-time fault detection and identification of industrial plants. Our proposal is based on the analysis of selected features using recursive density estimation and a new evolving classifier algorithm. More specifically, the proposed approach for the detection stage is based on the concept of the density in the data space, which is not the same as the probability density function, but is a very useful measure for abnormality/outliers detection. This density can be expressed by a Cauchy function and can be calculated recursively, which makes it memory and computational power efficient and, therefore, applicable to on-line applications. The identification/diagnosis stage is based on a self-developing (evolving) fuzzy-rule-based classifier system proposed in this paper, called the AutoClass. An important property of AutoClass is that it can start learning “from scratch”. Not only do the fuzzy rules not need to be pre-specified, but neither do the number of classes for AutoClass (the number may grow, with new class labels being added by the online learning process), in a fully unsupervised manner. In the event that an initial rule base exists, AutoClass can evolve/develop it further based on the newly arrived faulty state data. In order to validate our proposal, we present experimental results from a level control didactic process, where control and error signals are used as features for the fault detection and identification system, 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, as well as storage of old data, are not required. The obtained results are significantly better than the traditional approaches.

AB - In this paper, we propose a two-stage algorithm for real-time fault detection and identification of industrial plants. Our proposal is based on the analysis of selected features using recursive density estimation and a new evolving classifier algorithm. More specifically, the proposed approach for the detection stage is based on the concept of the density in the data space, which is not the same as the probability density function, but is a very useful measure for abnormality/outliers detection. This density can be expressed by a Cauchy function and can be calculated recursively, which makes it memory and computational power efficient and, therefore, applicable to on-line applications. The identification/diagnosis stage is based on a self-developing (evolving) fuzzy-rule-based classifier system proposed in this paper, called the AutoClass. An important property of AutoClass is that it can start learning “from scratch”. Not only do the fuzzy rules not need to be pre-specified, but neither do the number of classes for AutoClass (the number may grow, with new class labels being added by the online learning process), in a fully unsupervised manner. In the event that an initial rule base exists, AutoClass can evolve/develop it further based on the newly arrived faulty state data. In order to validate our proposal, we present experimental results from a level control didactic process, where control and error signals are used as features for the fault detection and identification system, 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, as well as storage of old data, are not required. The obtained results are significantly better than the traditional approaches.

KW - Fault detection

KW - Fault diagnosis

KW - Fault identification

KW - Recursive density estimation

KW - Evolving classifiers

KW - Autonomous learning

KW - STATISTICAL PROCESS-CONTROL

KW - ARTIFICIAL IMMUNE-SYSTEM

KW - REAL-TIME

KW - NONLINEAR-SYSTEMS

KW - FUZZY IDENTIFICATION

KW - DIAGNOSIS

KW - MODEL

KW - ALGORITHMS

KW - STREAMS

KW - DESIGN

U2 - 10.1016/j.neucom.2014.05.086

DO - 10.1016/j.neucom.2014.05.086

M3 - Journal article

VL - 150

SP - 289

EP - 303

JO - Neurocomputing

JF - Neurocomputing

SN - 0925-2312

IS - A

ER -