Fault diagnosis of power transformers using multi-class least square support vector machines classifiers with particle swarm optimisation
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Lijun Yang | Ruijin Liao | Hanbo Zheng | Stanislaw Grzybowski | Lijun Yang | S. Grzybowski | R. Liao | Hanbo Zheng
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