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[Author] Wenbin LIU(1hit)

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  • Multidimensional Tensor-Aware GAN based Pseudo Measurement Data Deduction in IoT-Empowered Distribution Station Open Access

    Jie REN  Minglin LIU  Lisheng LI  Shuai LI  Mu FANG  Wenbin LIU  Yang LIU  Haidong YU  Shidong ZHANG  

     
    PAPER-Systems and Control

      Pubricized:
    2024/08/05
      Vol:
    E108-A No:2
      Page(s):
    65-76

    The distribution station serves as a foundational component for managing the power system. However, there are missing data in the areas without collection devices due to the limitation of device deployment, leading to an adverse impact on the real-time and precise monitoring of distribution stations. The problem of missing data can be solved by the pseudo measurement data deduction method. Traditional pseudo measurement data deduction methods overlook the temporal and contextual correlations of distribution station data, resulting in a lower restoration accuracy. Motivated by the above challenges, this paper proposes a novel pseudo measurement data deduction model for minimal data collection requirements in distribution stations. Compared to the traditional GAN, the proposed enhanced GAN improves the architecture by decomposing the input tensor of the generator, allowing it to handle high-dimensional and intricate data. Furthermore, we enhance the loss function to accelerate the model’s convergence speed. Our proposed approach allows GAN to be trained within a supervised environment, effectively enhancing the accuracy of model training. The simulation result shows that the proposed algorithm achieves better performances compared with existing methods.

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