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Active Distribution System State Estimation: Comparison Between Weighted Least Squares and Extended Kalman Filter Algorithms

机译:有源配电系统状态估计:加权最小二乘法与扩展卡尔曼滤波算法的比较

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Power distribution systems have a topology which is typically unknown to the distribution system operators. Remote Terminal Units and SCADAs monitor these networks primarily at the substation level. However, with the widespread integration of Distributed Generation units (DGs), the need for real-time control of Active Distribution Networks is urgent. While DGs can improve the performance of power systems through voltage support, price elasticity, and reduced emissions of greenhouse gases, they also present challenges such as voltage spikes and bidirectional power flows. The distribution systems' state needs to be known accurately with high refresh rates and low time latency to deal with these issues. Real-time state estimation (SE) that use of Phasor Measurement Units (PMU) data allows the prediction of the distribution systems' nodal voltages and phasor angles. This paper presents a performance analysis comparison between the Weighted Least Square (WLS) and the Extended Kalman Filter (EKF) algorithms on active distribution grids. The WLS is a static SE algorithm, while EKF is a recursive SE method. The paper first recounts the analytical formulation of both approaches and then quantifies the differences in their performance. The tests were carried out on a modified IEEE-33 bus test feeder that included an optimally placed DG. For the test feeder's nodes load profile, the PMU-data generated during the ADRES-CONCEPT project was used. MATLAB and OpenDSS software were used to run the experiments. The results show that if the process model is correct, the EKF approach performs better.
机译:配电系统具有通常对于配电系统运营商而言未知的拓扑。远程终端单元和SCADA主要在变电站级别监视这些网络。但是,随着分布式发电装置(DG)的广泛集成,迫切需要对有源配电网进行实时控制。 DG可以通过电压支持,价格弹性和减少温室气体排放来改善电力系统的性能,但它们也带来了诸如电压尖峰和双向潮流等挑战。需要以高刷新率和低时间延迟来准确知道分发系统的状态,以应对这些问题。使用相量测量单位(PMU)数据的实时状态估计(SE)可以预测配电系统的节点电压和相量角。本文介绍了加权最小二乘(WLS)和扩展卡尔曼滤波器(EKF)算法在有源配电网上的性能分析比较。 WLS是静态SE算法,而EKF是递归SE方法。本文首先叙述了两种方法的分析公式,然后量化了它们在性能上的差异。测试是在改良的IEEE-33总线测试馈送器上进行的,该馈送器包括放置在最佳位置的DG。对于测试馈送器的节点负载配置文件,使用了在ADRES-CONCEPT项目期间生成的PMU数据。使用MATLAB和OpenDSS软件进行实验。结果表明,如果过程模型正确,则EKF方法的效果更好。

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