引用本文:董秀成,陶加贵,王海滨,刘 帆.自适应模糊支持向量机增量算法在变压器故障诊断中的应用[J].电力自动化设备,2010,(11):
DONG Xiucheng,TAO Jiagui,WANG Haibin,LIU Fan.Incremental algorithm of adaptive fuzzy support vector machinein transformer fault diagnosis[J].Electric Power Automation Equipment,2010,(11):
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自适应模糊支持向量机增量算法在变压器故障诊断中的应用
董秀成1, 陶加贵1,2, 王海滨1, 刘 帆2
1.西华大学 四川省信号与信息处理重点实验室,四川 成都 610039;2.重庆大学 输配电装备及系统安全与新技术国家重点实验室,重庆 400044
摘要:
利用油中溶解气体对变压器进行故障有无以及故障类别判断时,为抑制冗余信息的干扰,提取与分类模式密切相关的特征作为每层诊断模型的输入;增量学习算法通过提取模型的支持向量和误判样本,逐步积累样本的空间分布知识,提高诊断模型的精度与训练速度,同时剔除对构建模型无贡献的样本以节约存储空间。为提升算法的收敛速度,采用参数自适应优化算法动态搜索模糊支持向量机的模型参数。最后,通过实例将该算法与普通的多分类支持向量机以及多分类模糊支持向量机相比,得出该算法具有相对较好的收敛性和诊断效果。
关键词:  模糊支持向量机  增量算法  隶属度  自适应  油中溶解气体
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Incremental algorithm of adaptive fuzzy support vector machinein transformer fault diagnosis
DONG Xiucheng1, TAO Jiagui1,2, WANG Haibin1, LIU Fan2
1.Provincial Key Lab on Signal and Information Processing,Xihua University,Chengdu 610039,China;2.State Key Laboratory of Power Transmission Equipment and System Security and New Technology,Chongqing University,Chongqing 400044,China
Abstract:
When the oil dissolved gases are used to detect and classify the transformer faults,in order to suppress the interferences of redundant information,the features closely related to the classification structure are extracted as the inputs of the diagnostic model at each layer. By extracting the support vectors and false samples,the incremental learning algorithm gradually accumulates the information of sample spatial distribution,improves the accuracy and training speed of diagnosis model,and removes the useless samples to save storage space. The adaptive parameter optimization algorithm is applied to dynamically search the parameters of FSVM(Fuzzy Support Vector Machine) to enhance the convergence speed. Compared with multi-class SVM(Support Vector Machine) and multi-class FSVM,examples show that,the incremental learning algorithm has better convergence property and diagnosis results.
Key words:  fuzzy support vector machine  incremental algorithm  membership  adaptation  oil dissolved gases

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