2022
DOI: 10.1007/s00202-021-01446-8
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Effective fault diagnosis method for the pitch system, the drive train, and the generator with converter in a wind turbine system

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Cited by 10 publications
(3 citation statements)
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“…These modern approaches have been studied and applied in several works, such as; Abdellatif Mahammedi et al in [1], Ahmed Hafaifa et al in [4], Aref Eskandari et al in [8], Balamurugan et al in [10], Barun Basnet et al in [12], Fengxin Cui et al in [14], Imed Kaid et al in [17], Jianbo Yu et al in [19], Kurukuru et al in [22], Ruby Beniwal et al in [28]. Other research works have been conducted in the direction of improving the quality of electrical power generation, and detecting faults over time with high sensitivity of the monitoring system, such as the works of Abdelmoumen Saci et al in [2], Ahmed Zohair Djeddi et al in [5], Ali Kidar et al in [6], Azghandi Ali et al in [9], Fan Jia et al in [13], Ghadir Badran et al in [16], José Miguel et al in [20], Joshuva Arockia et al in [21], Mohamed Ben Rahmoune et al in [24], Mohammed Amine Deriche et al in [25][26], Sally Abdulaziz et al in [29] and Vincenzo Carletti et al in [33]. However, the need to detect and locate a failure according to the needs of the industry and the complexity of the systems calls for several diagnostic techniques, which have different criteria characteristics for the detection and diagnosis of these failures, which solve the problems of fault diagnosis conveniently.…”
Section: Introductionmentioning
confidence: 99%
“…These modern approaches have been studied and applied in several works, such as; Abdellatif Mahammedi et al in [1], Ahmed Hafaifa et al in [4], Aref Eskandari et al in [8], Balamurugan et al in [10], Barun Basnet et al in [12], Fengxin Cui et al in [14], Imed Kaid et al in [17], Jianbo Yu et al in [19], Kurukuru et al in [22], Ruby Beniwal et al in [28]. Other research works have been conducted in the direction of improving the quality of electrical power generation, and detecting faults over time with high sensitivity of the monitoring system, such as the works of Abdelmoumen Saci et al in [2], Ahmed Zohair Djeddi et al in [5], Ali Kidar et al in [6], Azghandi Ali et al in [9], Fan Jia et al in [13], Ghadir Badran et al in [16], José Miguel et al in [20], Joshuva Arockia et al in [21], Mohamed Ben Rahmoune et al in [24], Mohammed Amine Deriche et al in [25][26], Sally Abdulaziz et al in [29] and Vincenzo Carletti et al in [33]. However, the need to detect and locate a failure according to the needs of the industry and the complexity of the systems calls for several diagnostic techniques, which have different criteria characteristics for the detection and diagnosis of these failures, which solve the problems of fault diagnosis conveniently.…”
Section: Introductionmentioning
confidence: 99%
“…Different researches and studies have been proposed to deal with the diagnosis task of wind turbines using several approaches [3,[5][6][7][8][9][10][11][12][13][14][15][16][17][18][19][20]. These proposed methodologies adopt distinctive design of schemes, resulting in different properties according to the used techniques.…”
Section: Introductionmentioning
confidence: 99%
“…The mainly possible occurred faults are simulated with different scenarios in sensors, actuators, and system faults for all components of the horizontal three blades wind turbine: pitch system, the drive train, the generator, and the converting system. Paper [12], an effective fault diagnosis method is proposed for the previous WT model in [11]. Where, the elaborated structure is based on physical redundancy in sensors to carry out the correct residuals between all the process measurements.…”
Section: Introductionmentioning
confidence: 99%