Yao Haiyan, Zhang Xin, Guo Qiang, Miao Yufeng, Guan Shan
Hangzhou Electric Power Equipment Manufacturing Co. Ltd Yuhang Qunli Complete Sets Electricity Manufacturing Branch Electric, Hangzhou, 311000, China.
Hangzhou Electric Power Equipment Manufacturing Co. Ltd., Hangzhou, 311000, China.
Sci Rep. 2024 Sep 2;14(1):20355. doi: 10.1038/s41598-024-71107-w.
To address the problems of low accuracy in fault diagnosis of oil-immersed transformers, poor state perception ability and real-time collaboration during diagnosis feedback, a fault diagnosis method for transformers based on the integration of digital twins is proposed. Firstly, fault sample balance is achieved through Iterative Nearest Neighbor Oversampling (INNOS), Secondly, nine-dimensional ratio features are extracted, and the correlation between dissolved gases in oil and fault types is established. Then, sparse principal component analysis (SPCA) is used for feature fusion and dimensionality reduction. Finally, the Aquila Optimizer (AO) is introduced to optimize the parameters of the Kernel Extreme Learning Machine (KELM), establishing the optimal AO-KELM diagnosis model. The final fault diagnosis accuracy reaches 98.1013%. Combining transformer digital twin models, real-time interaction mapping between physical entities and virtual space is achieved, enabling online diagnosis of transformer faults. Experimental results show that the method proposed in this paper has high diagnostic accuracy and strong stability, providing reference for the intelligent operation and maintenance of transformers.
针对油浸式变压器故障诊断准确率低、诊断反馈时状态感知能力差和实时协同性不佳等问题,提出一种基于数字孪生融合的变压器故障诊断方法。首先,通过迭代最近邻过采样(INNOS)实现故障样本均衡;其次,提取九维比值特征,建立油中溶解气体与故障类型之间的关联;然后,采用稀疏主成分分析(SPCA)进行特征融合与降维;最后,引入天鹰座优化器(AO)优化核极限学习机(KELM)的参数,建立最优的AO-KELM诊断模型,最终故障诊断准确率达到98.1013%。结合变压器数字孪生模型,实现物理实体与虚拟空间的实时交互映射,能够对变压器故障进行在线诊断。实验结果表明,本文提出的方法具有较高的诊断准确率和较强的稳定性,为变压器的智能运维提供了参考。