计算
断层(地质)
欧几里德距离
计算机科学
分类器(UML)
风力发电
聚类分析
模式识别(心理学)
工程类
算法
人工智能
电气工程
地质学
地震学
作者
Khadija Attouri,Majdi Mansouri,Mansour Hajji,Abdelmalek Kouadri,Kais Bouzrara,Hazem Nounou
出处
期刊:Sustainability
[Multidisciplinary Digital Publishing Institute]
日期:2023-02-09
卷期号:15 (4): 3191-3191
被引量:17
摘要
In this paper, we present a novel and effective fault detection and diagnosis (FDD) method for a wind energy converter (WEC) system with a nominal power of 15 KW, which is designed to significantly reduce the complexity and computation time and possibly increase the accuracy of fault diagnosis. This strategy involves three significant steps: first, a size reduction procedure is applied to the training dataset, which uses hierarchical K-means clustering and Euclidean distance schemes; second, both significantly reduced training datasets are utilized by the KPCA technique to extract and select the most sensitive and significant features; and finally, in order to distinguish between the diverse WEC system operating modes, the selected features are used to train a bidirectional long-short-term memory classifier (BiLSTM). In this study, various fault scenarios (short-circuit (SC) faults and open-circuit (OC) faults) were injected, and each scenario comprised different cases (simple, multiple, and mixed faults) on different sides and locations (generator-side converter and grid-side converter) to ensure a comprehensive and global evaluation. The obtained results show that the proposed strategy for FDD via both applied dataset size reduction methods not only improves the accuracy but also provides an efficient reduction in computation time and storage space.
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