Transfer learning fault diagnosis method considering multi-element factor situation evolution for distribution transformer
A technology of transfer learning and fault diagnosis, applied in machine learning, measuring electrical variables, measuring devices, etc., can solve the problem of small fault data of distribution transformers
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[0084] The technical solutions of the present invention will be clearly and completely described below in conjunction with the drawings and specific embodiments of the present invention.
[0085] Such as Figure 7 As shown, the present invention provides a distribution transformer migration learning fault diagnosis method that considers the situation evolution of multiple factors, including the following steps:
[0086] 1) The indicator status variables that affect the operating status of the distribution transformer are divided into dynamic indicator status variables, quasi-dynamic indicator status variables and static indicator status variables, and an evaluation indicator system for the operating status of the distribution transformer is built on this basis;
[0087] 2) Binary quantification of the indicator state quantities in the state evaluation index system, using the Apriori algorithm to calculate the correlation between these indicator state quantities and the distribution t...
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