2023
DOI: 10.3390/en16166070
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Research on Load Forecasting of Novel Power System Based on Efficient Federated Transfer Learning

Jian Wang,
Baoquan Wei,
Jianjun Zeng
et al.

Abstract: The load forecasting research for an NPS faces challenges including a high model accuracy, non-sharing of data, and a high communication cost. This paper proposes a load forecasting method for an NPS, based on efficient federated transfer learning (FTL). The adversarial feature extractor is added on the basis that FTL can effectively transfer the parameter features of the non-mask load to the local load data, and make up for the loss of mask load prediction accuracy. In order to improve the efficiency of the g… Show more

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