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Satellite Fault Diagnosis Using Support Vector Machines Based on a Hybrid Voting Mechanism

机译:基于混合投票机制的支持向量机使用卫星故障诊断

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The satellite fault diagnosis has an important role in enhancing the safety, reliability, and availability of the satellite system. However, the problem of enormous parameters and multiple faults makes a challenge to the satellite fault diagnosis. The interactions between parameters and misclassifications from multiple faults will increase the false alarm rate and the false negative rate. On the other hand, for each satellite fault, there is not enough fault data for training. To most of the classification algorithms, it will degrade the performance of model. In this paper, we proposed an improving SVM based on a hybrid voting mechanism (HVM-SVM) to deal with the problem of enormous parameters, multiple faults, and small samples. Many experimental results show that the accuracy of fault diagnosis using HVM-SVM is improved.
机译:卫星故障诊断在提高卫星系统的安全性,可靠性和可用性方面具有重要作用。然而,巨大参数和多个故障的问题对卫星故障诊断产生了挑战。来自多个故障的参数和错误分类之间的交互将增加误报率和假负速率。另一方面,对于每个卫星故障,没有足够的故障数据进行培训。对于大多数分类算法,它将降低模型的性能。在本文中,我们提出了基于混合投票机制(HVM-SVM)的改善SVM,以处理巨大参数,多个故障和小样本的问题。许多实验结果表明,使用HVM-SVM进行故障诊断的准确性。

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