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Wind turbine fault sampling algorithm based on improved BSMOTE and sequential characteristics
YANG Xian, ZHAO Jisheng, QIANG Baohua, MI Luzhong, PENG Bo, TANG Chenghua, LI Baolian
Journal of Computer Applications    2021, 41 (6): 1673-1678.   DOI: 10.11772/j.issn.1001-9081.2020091384
Abstract278)      PDF (1063KB)(456)       Save
To solve the imbalance problem of wind turbine dataset, a Borderline Synthetic Minority Oversampling Technique-Sequence (BSMOTE-Sequence) sampling algorithm was proposed. In the algorithm, when synthesizing new samples, the space and time characteristics were considered comprehensively, and the new samples were cleaned, so as to effectively reduce the generation of noise points. Firstly, the minority class samples were divided into security class samples, boundary class samples and noise class samples according to the class proportion of the nearest neighbor samples of each minority class sample. Secondly, for each boundary class sample, the minority class sample set with the closest spatial distance and time span was selected, the new samples were synthesized by linear interpolation method, and the noise class samples and the overlapping samples between classes were filtered out. Finally, Support Vector Machine (SVM), Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) were used as the fault detection models of wind turbine gear box, and F1-Score, Area Under Curve (AUC) and G-mean were used as performance evaluation indices of the models, and the proposed algorithm was compared with other sampling algorithms on real wind turbine datasets. Experimental results show that, compared with those of the existing algorithms, the classification effect of the samples generated by BSMOTE-Sequence algorithm is better with an average increase of 3% in F1-Score, AUC and G-mean of the detection models. The proposed algorithm can be effectively applicable to the field of wind turbine fault detection where the data with sequential rule is imbalanced.
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Steel furnace online quality monitoring method based on real-time data processing
LI Baolian ZHANG Xiaolong
Journal of Computer Applications    2014, 34 (1): 286-291.   DOI: 10.11772/j.issn.1001-9081.2014.01.0286
Abstract493)      PDF (868KB)(468)       Save
This paper proposed a monitoring and online quality analysis method based on real-time data analysis in order to solve the problems that data stream is hard to manage and analyze and production monitoring and online quality analysis can not be handled effectively in the process of steel heating furnace production. By combining real-time database and relational database, and using six Sigma management tools and control chart techniques, the authors proposed an approach to do monitoring and online quality analysis. The implemented system includes real-time data processing, production monitoring as well as online/off-line quality monitoring. The performance of the system indicates that it can be effectively applied in the heating furnace in real-time data analysis and online quality monitoring.
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