Explainable Fault Diagnosis of Oil-Immersed Transformers: A Glass-Box Model
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By using the electromagnetic time reversal (EMTR) theory, the paper studies its properties in order to derive a new fault location method to be used in power networks. It is shown that, in the reversed-time stage, the current signal observed at the true fa ...
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