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An integrated fault pattern recognition method of satellite control system using kernel principal component analysis and support vector machine

机译:卫星控制系统的集成故障模式识别方法,使用内核主成分分析和支持向量机

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摘要

An integrated fault pattern recognition method of satellite control system is put forward, of which the key components are feature extraction and support vector machine. In order to work out the most effective feature for fault detection, kernel principal component analysis is adopted to build the accurate principal component model which can not only simplify feature extraction but also compress the feature space dimensions of nonlinear data. Multi classification support vector machine is constructed to recognize the fault pattern, of which the parameters are optimized by adopting particle swarm optimization algorithm. The simulation results indicate the method is capable of detecting fault and recognizing fault pattern well and truly in time.
机译:提出了一种卫星控制系统的集成故障模式识别方法,其中关键部件是特征提取和支持向量机。 为了为故障检测的最有效的特征进行制造,采用内核主成分分析来构建无法仅简化特征提取的准确主成分模型,而且还可以压缩非线性数据的特征空间尺寸。 多分类支持向量机被构造以识别故障模式,其中通过采用粒子群优化算法来优化参数。 仿真结果表明该方法能够良好地检测故障并识别故障图案,真正及时识别故障模式。

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