首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >A novel method for spacecraft electrical fault detection based on FCM clustering and WPSVM classification with PCA feature extraction
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A novel method for spacecraft electrical fault detection based on FCM clustering and WPSVM classification with PCA feature extraction

机译:基于FCM聚类和WPSVM分类并结合PCA特征提取的航天器电气故障检测新方法

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摘要

The measurement of spacecraft electrical characteristics and multi-label classification issues are generally including a large amount of unlabeled test data processing, high-dimensional feature redundancy, time-consumed computation, and identification of slow rate. In this paper, a fuzzy c-means offline (FCM) clustering algorithm and the approximate weighted proximal support vector machine (WPSVM) online recognition approach have been proposed to reduce the feature size and improve the speed of classification of electrical characteristics in the spacecraft. In addition, the main component analysis for the complex signals based on the principal component feature extraction is used for the feature selection process. The data capture contribution approach by using thresholds is furthermore applied to resolve the selection problem of the principal component analysis (PCA), which effectively guarantees the validity and consistency of the data. Experimental results indicate that the proposed approach in this paper can obtain better fault diagnosis results of the spacecraft electrical characteristics' data, improve the accuracy of identification, and shorten the computing time with high efficiency.
机译:航天器电气特性的测量和多标签分类问题通常包括大量未标记的测试数据处理,高维特征冗余,耗时的计算以及慢速识别。本文提出了一种模糊c均值离线(FCM)聚类算法和近似加权近端支持向量机(WPSVM)在线识别方法,以减小特征尺寸并提高航天器电特性分类的速度。另外,基于主成分特征提取的复合信号的主成分分析用于特征选择处理。通过阈值的数据采集贡献方法,进一步解决了主成分分析(PCA)的选择问题,有效地保证了数据的有效性和一致性。实验结果表明,本文提出的方法可以获得较好的航天器电气特性数据故障诊断结果,提高了识别精度,并缩短了计算时间。

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