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Transformer Fault Diagnosis Based on Improved SVM Model

机译:基于改进SVM模型的变压器故障诊断

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This paper proposes an improved SVM method in order to improve the speed of classification when SVM treats with the large training set. Firstly, using RS theory to eliminate redundant information of the large original training data set, secondly, utilizing the idea of probabilities, train an initial classifier with a small training set, and prune the large training set with the initial classifier to obtain a small reduction set. Training with the reduction set, final classifier is obtained. Experiments show that this method effectively reduces the training set, and improves the classify ability.
机译:本文提出了一种改进的SVM方法,以提高SVM处理大量训练集时的分类速度。首先,使用RS理论消除大型原始训练数据集的冗余信息,其次,利用概率的思想,使用较小的训练集训练初始分类器,并使用初始分类器对大型训练集进行修剪以得到较小的约简。放。用归约集训练,得到最终分类器。实验表明,该方法有效地减少了训练量,提高了分类能力。

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