基于TSNE和IBASA-SVM的油浸变压器故障诊断

Q4 Engineering
Wenqing Feng, Guoyong Zhang, Yi Ouyang, Xinyue Pi, Lifu He, Jing Luo, Lingzhi Yi, You Guo
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引用次数: 0

摘要

随着电力系统的快速发展,油浸式变压器在变配电系统中得到了广泛的应用。油浸式变压器的故障对电力系统是一个巨大的威胁。因此,准确诊断油浸式变压器的故障具有重要意义。通过机器学习方法和群体智能算法对油浸式变压器的故障进行准确诊断。为了准确诊断油浸式变压器的故障,提出了一种基于T分布随机邻域嵌入和支持向量机的故障诊断方法。采用改进的甲虫天线搜索算法对支持向量机的参数进行优化。首先,采用非编码比方法获得九维特征指标。其次,通过T分布随机邻域嵌入将原始的九维数据简化为三维数据。最后,将降维后的数据作为支持向量机的输入,通过改进的甲虫天线搜索算法进行优化,可以诊断变压器的故障类型。准确率为94.53%,运算时间约1.88s。结果表明,本文提出的方法是合理的。实验结果表明,本文提出的方法准确率高,运算时间短。本文的方法还可以诊断出难以诊断的混合故障。在大数据时代,变压器的数据量很大,因此本文提出的方法具有一定的工程意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Diagnosis of Oil -Immersed Transformer based on TSNE and IBASA-SVM
With the rapid development of power system, oil-immersed transformers are widely used in the substation and distribution system. The faults of oil-immersed transformers are large threat to the power system. Therefore, it is significant that the faults of oil-immersed transformers can be diagnosed accurately. To accurately diagnose the faults of oil-immersed transformers through machine learning methods and swarm intelligent algorithms. To accurately diagnose the faults of oil-immersed transformers, a fault diagnosis method based on T-distributed stochastic neighbor embedding and support vector machine is proposed. The improved beetle antennae search algorithm is used to optimize the parameters of support vector machine. Firstly, the non-coding ratio method is used to obtain nine-dimensional characteristic indices. Secondly, the original nine-dimensional data are reduced to three-dimensional by T-distributed stochastic neighbor embedding. Lastly, the data after dimensionality reduction are used as the input of the support vector machine optimized by improved beetle antennae search algorithm and the fault types of transformers can be diagnosed. The accuracy rate is 94.53% and the operation time is about 1.88s. The results indicate that the method proposed by this paper is reasonable. The experimental results show that the method proposed by this paper has a high accuracy rate and low operation time. Mixed faults that are difficult to diagnose also can be diagnosed by this paper's method. In the era of big data, there is a lot of data of transformer, so the method proposed in this paper has certain engineering significance.
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来源期刊
Recent Patents on Mechanical Engineering
Recent Patents on Mechanical Engineering Engineering-Mechanical Engineering
CiteScore
0.80
自引率
0.00%
发文量
48
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