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State Estimation Based on Ensemble DA-DSVM in Power System

机译:基于集成DA-DSVM的电力系统状态估计

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This paper investigates the state estimation problem of power systems. A novel, fast and accurate state estimation algorithm is presented to solve this problem based on the one-dimensional denoising autoencoder and deep support vector machine (1D DA-DSVM). Besides, for further reducing the computation burden, a partitioning method is presented to divide the power system into several sub-networks and the proposed algorithm can be applied to each sub-network. A hybrid computing architecture of Central Processing Unit (CPU) and Graphics Processing Unit (GPU) is employed in the overall state estimation, in which the GPU is used to estimate each sub-network and the CPU is used to integrate all the calculation results and output the state estimate. Simulation results show that the proposed method can effectively improve the accuracy and computational efficiency of the state estimation of power systems.
机译:本文研究了电力系统的状态估计问题。针对一维去噪自动编码器和深度支持向量机(1D DA-DSVM),提出了一种新颖,快速,准确的状态估计算法。此外,为了进一步减轻计算负担,提出了一种将电力系统划分为多个子网的划分方法,并将所提出的算法应用于每个子网。在总体状态估计中采用了中央处理器(CPU)和图形处理单元(GPU)的混合计算架构,其中GPU用于估计每个子网,CPU用于集成所有计算结果,并且输出状态估计。仿真结果表明,该方法可以有效提高电力系统状态估计的准确性和计算效率。

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