Research on Development and Application of Support Vector Machine - Transformer Fault Diagnosis

Ruifang Zhang, Yangxue Liu
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引用次数: 3

Abstract

Support Vector Machine (SVM) is a machine learning method based on statistical learning theory, solving the problems of classification and regression by means of optimization methods. The method can effectively solve the problem of small number of samples, nonlinearity and high dimensionality, and largely avoids the problems of "dimensionality disaster", "over-fitting" and local minimum caused by traditional statistical theory. However, there are still some problems, such as high complexity of the algorithm and difficulty in adapting to large-scale data. The article systematically introduces the theory of support vector machine, summarizes the common training algorithms of standard (traditional) support vector machine and their existing problems, the new learning models and algorithms developed on this basis. And verify the actual effect and scope of each support vector machine model through the application of transformer fault diagnosis.
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支持向量机在变压器故障诊断中的发展与应用研究
支持向量机(SVM)是一种基于统计学习理论的机器学习方法,通过优化方法解决分类和回归问题。该方法有效地解决了样本数量少、非线性和高维数的问题,很大程度上避免了传统统计理论带来的“维数灾难”、“过拟合”和局部最小值等问题。但也存在算法复杂度高、难以适应大规模数据等问题。本文系统地介绍了支持向量机的理论,总结了标准(传统)支持向量机常见的训练算法及其存在的问题,并在此基础上开发了新的学习模型和算法。并通过变压器故障诊断的应用验证了各支持向量机模型的实际效果和适用范围。
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