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Fuzzy support vector machine based on feature- data huffman compression

机译:基于特征 - Data Huffman压缩的模糊支持向量机

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More and more state variables in the case, the filter state variables, and identify operating modes means that the state collect and spend a lot of computing time, which lost control of real-time. And contains a lot of noise in electronic devices such as exceptions, these factors will influence the support vector machine to establish the optimal classification surface. High-frequency signal conversion equipment needs in the shortest possible time, alarm, address this requirement, we use a Huffman coding on the control signal compression, Then use a Kernel density estimation method, a structural form of fuzzy membership function, the membership function applied to the fuzzy support vector machines for fault diagnosis, This method can eliminate the characteristics of the impact of noise and outliers, through training support vector machines, we can get fault diagnosis model to realize the failure of electronic equipment, diagnostic classification. The method is applied to high-frequency signal conversion equipment for fault diagnosis, the results show that the compression algorithm used to retain equipment operation to the maximum extent, while greatly reducing the information processing time, Fuzzy support vector functions highlight the different characteristics of fault and correctly diagnose the fault type and effective, this method of fault diagnosis of electronic devices to provide a new way.
机译:在情况下,越来越多的状态变量,滤波器状态变量和识别操作模式意味着状态收集并花费大量计算时间,这丢失了对实时的控制。并包含电子设备中的大量噪音,例如例外,这些因素将影响支持向量机建立最佳分类表面。高频信号转换设备在最短的时间内需要,报警,解决此要求,我们在控制信号压缩上使用霍夫曼编码,然后使用内核密度估计方法,采用模糊隶属函数的结构形式,占用的隶属函数对于故障诊断的模糊支持向量机,这种方法可以消除噪声和异常值影响的特点,通过训练支持向量机,我们可以获得故障诊断模型,实现电子设备的失效,诊断分类。该方法应用于用于故障诊断的高频信号转换设备,结果表明,压缩算法用于将设备操作保持在最大程度,同时大大减少信息处理时间,模糊支持向量功能突出了故障的不同特征并正确诊断故障类型有效,这种故障诊断方法的电子设备提供了一种新的方式。

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