论文标题

数据驱动的流量和注射估计在PMU无可用传输系统中

Data-Driven Flow and Injection Estimation in PMU-Unobservable Transmission Systems

论文作者

Sahoo, Satyaprajna, Sifat, Anwarul Islam, Pal, Anamitra

论文摘要

对于电网中的各种应用,需要快速准确地了解功率流和电源。可以使用相量测量单元(PMU)直接以高速计算它们;但是,计算所有流量和注射需要大量PMU。同样,如果它们是根据线性状态估计器的输出计算得出的,则由于电压和功率之间的二次关系,它们的精度将恶化。本文采用机器学习来执行快速准确的流动和注入估算,而PMU稀疏观察到。我们训练深层神经网络(DNN),以学习PMU测量和功率流/注射之间的映射功能。功率流和注射之间的关系通过在其损耗函数中添加线性约束来纳入DNN。使用IEEE 118-BUS系统获得的结果表明,与其他数据驱动的方法相比,所提出的方法在严重无法观察的功率系统中执行更准确的流量/注入估计。

Fast and accurate knowledge of power flows and power injections is needed for a variety of applications in the electric grid. Phasor measurement units (PMUs) can be used to directly compute them at high speeds; however, a large number of PMUs will be needed for computing all the flows and injections. Similarly, if they are calculated from the outputs of a linear state estimator, then their accuracy will deteriorate due to the quadratic relationship between voltage and power. This paper employs machine learning to perform fast and accurate flow and injection estimation in power systems that are sparsely observed by PMUs. We train a deep neural network (DNN) to learn the mapping function between PMU measurements and power flows/injections. The relation between power flows and injections is incorporated into the DNN by adding a linear constraint to its loss function. The results obtained using the IEEE 118-bus system indicate that the proposed approach performs more accurate flow/injection estimation in severely unobservable power systems compared to other data-driven methods.

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