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首页> 外文期刊>Journal of Modern Power Systems and Clean Energy >Measurement Sensitivity and Estimation Error in Distribution System State Estimation using Augmented Complex Kalman Filter
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Measurement Sensitivity and Estimation Error in Distribution System State Estimation using Augmented Complex Kalman Filter

机译:使用增强复合卡尔曼滤波器分布系统状态估计中的测量灵敏度和估计误差

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摘要

Distribution state estimation (DSE) is an essential part of an active distribution network with high level of distributed energy resources. The challenges of accurate DSE with limited measurement data is a well-known problem. In practice, the operation and usability of DSE depend on not only the estimation accuracy but also the ability to predict error variance. This paper investigates the application of error covariance in DSE by using the augmented complex Kalman filter (ACKF). The Kalman filter method inherently provides state error covariance prediction. It can be utilized to accurately infer the error covariance of other parameters and provide a method to determine optimal measurement locations based on the sensitivity of error covariance to measurement noise covariance. This paper also proposes a generalized formulation of ACKF to allow scalar measurements to be incorporated into the complex-valued estimator. The proposed method is simulated by using modified IEEE 34-bus and IEEE 123-bus test feeders, and randomly generates the load data of complex-valued Wiener process. The ACKF method is compared with an equivalent formulation using the traditional weighted least squares (WLS) method and iterated extended Kalman filter (IEKF) method, which shows improved accuracy and computation performance.
机译:分布状态估计(DSE)是具有高水平分布能源的主动配送网络的重要组成部分。具有有限测量数据的准确DSE的挑战是一个众所周知的问题。在实践中,DSE的操作和可用性不仅取决于估计准确性,而且取决于预测误差方差的能力。本文通过使用增强复杂的卡尔曼滤波器(ACKF)来调查误差协方差在DSE中的应用。卡尔曼滤波方法固有地提供状态误差协方差预测。它可以用于准确地推断其他参数的错误协方差,并提供一种基于误差协方差与测量噪声协方差的灵敏度来确定最佳测量位置的方法。本文还提出了ACKF的广义配方,以允许标量测量结合到复值估计器中。通过使用修改的IEEE 34-BUR和IEEE 123总线测试馈线模拟所提出的方法,并随机生成复值维纳过程的负载数据。使用传统的加权最小二乘(WLS)方法和迭代扩展卡尔曼滤波器(IEKF)方法的等效配方进行比较ACKF方法,其显示出改善的精度和计算性能。

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