Li Ke, Liu Yi, Wang Quanxin, Wu Yalei, Song Shimin, Sun Yi, Liu Tengchong, Wang Jun, Li Yang, Du Shaoyi
Ergonomics and Environment Control Laboratory, Beihang University, Beijing, China.
China Academy of Space Technology, Beijing, China.
PLoS One. 2015 Nov 6;10(11):e0140395. doi: 10.1371/journal.pone.0140395. eCollection 2015.
This paper proposes a novel multi-label classification method for resolving the spacecraft electrical characteristics problems which involve many unlabeled test data processing, high-dimensional features, long computing time and identification of slow rate. Firstly, both the fuzzy c-means (FCM) offline clustering and the principal component feature extraction algorithms are applied for the feature selection process. Secondly, the approximate weighted proximal support vector machine (WPSVM) online classification algorithms is used to reduce the feature dimension and further improve the rate of recognition for electrical characteristics spacecraft. Finally, the data capture contribution method by using thresholds is proposed to guarantee the validity and consistency of the data selection. The experimental results indicate that the method proposed can obtain better data features of the spacecraft electrical characteristics, improve the accuracy of identification and shorten the computing time effectively.