@ARTICLE{Zhao_Shuzong_Power_2025, author={Zhao, Shuzong and Pattanadech, Norasage}, volume={vol. 74}, pages={191 –208}, journal={Archives of Electrical Engineering}, howpublished={online}, year={2025}, publisher={Polish Academy of Sciences}, abstract={To optimize the parameter setting of the support vector machine and improve the classification performance and computational efficiency of power transformer fault diagnosis, this study proposes an improved grey wolf optimization algorithm. By optimizing the global search and local optimization capabilities of the greywolf algorithm and combining them with stacked denoising autoencoders, a new power transformer fault warning model is constructed. Firstly, the grey wolf optimization algorithm is optimized through four strategies: elite reverse learning, nonlinear control parameters, Lévy flight, and particle swarm optimization, which improve its global search and local optimization capabilities. Secondly, the stacked denoising autoencoder is utilized to extract high-level features of fault data, and the improved GWO algorithm and SVM are combined to complete fault classification. The results indicated that the proposed diagnostic model achieved a diagnostic accuracy of 0.979, a recall rate of 0.986, and an F1 value of 0.983 in benchmark performance testing. In practical applications, the average fault diagnosis accuracy of this model could reach up to 99.21%, and the average diagnosis time was only 0.08 s. The developed power transformer fault warning model can provide an efficient and reliable technical solution for fault diagnosis in the power system.}, title={Power transformer fault warning combining support vector machine and improved grey wolf optimization algorithm}, type={Article}, URL={http://czasopisma.pan.pl/Content/134182/PDF-MASTER/10.pdf}, doi={10.24425/aee.2025.153019}, keywords={fault diagnosis, HGWO, SDAE, SVM, transformer}, }