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Power Quality Problem Classification Methods Based on Active Transfer Learning

机译:基于主动转移学习的电能质量问题分类方法

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In this paper, we propose approach for classification of power quality problem using active transfer learning. Active learning is suitable for solving problems with real industrial data because even a small amount of labeled data can derive good performance. Active learning can derive performance by querying human data labelers for data the model does not learn or trained. Active transfer learning utilizes transfer learning for data sampling of the trained model. However, querying too much data can put pressure on human data labelers. Thus, we suggest the solution of this problem by limiting query in two ways. One is to limit the number of queries to 100 and the other is dynamically controlled the number of queries according to the accuracy. As a result, we derive better predictive performance with suggest method and compare the results with the traditional method.
机译:本文采用主动转移学习提出了电能质量问题分类的方法。主动学习适用于解决真实工业数据的问题,因为即使是少量标记的数据也会导出良好的性能。主动学习可以通过查询人类数据贴标程序来派生性能,以便模型不学习或培训。主动转移学习利用转移学习进行训练模型的数据采样。但是,查询太多的数据可以对人类数据贴标者压力。因此,我们通过以两种方式限制查询来建议解决这个问题。一个是将查询的数量限制为100,另一个是根据准确性动态控制查询的数量。因此,我们通过建议方法导出更好的预测性能,并将结果与​​传统方法进行比较。

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