In power system state estimation, the robust least absolute value robust dynamic estimator is well known. However, the covariance of the state estimation error cannot be obtained easily. In this article, an analytical equation is derived using influence function approximation to analyze the covariance of the robust least absolute value dynamic state estimator. The equation gives insights into the precision of the estimation and can be used to express the variances of the state estimates as functions of measurement noise variances, enabling the selection of sensors for specified estimator precision. Simulations on the IEEE 14-bus, 30-bus, and 118-bus systems are given to illustrate the usefulness of the equation. Monte Carlo experiments can ...
This study considers the dynamic state estimation of power systems with model uncertainties that mig...
In this paper, we propose an optimal robust state estimator using maximum likelihood optimization wi...
Kalman-based state estimators assume a priori knowledge of the covariance matrices of the process an...
In power system state estimation, the robust Least Absolute Value robust dynamic estimator is well-k...
The weighted least squares (WLS) estimator is commonly employed to solve the state estimation proble...
In this paper, we proposed to evaluate the optimal phasor measurement unit (PMU) placement based on ...
In this paper, we proposed to evaluate the optimal phasor measurement unit (PMU) placement based on ...
In realistic power system state estimation, the distribution of measurement noise is usually assumed...
In a power system, it is known that parameters may carry small errors due to the weather conditions,...
Power system state estimation (PSSE) plays an important role in power system operation. The Gaussia...
This paper develops an adaptive robust cubature Kalman lter (ARCKF) that is able to mitigate the adv...
Due to the unfavorable interference of non-Gaussian noise, abnormal system states, and rough measure...
State estimation plays a key role in the operation of power systems. This role becomes more importan...
The accuracy of power system state estimation (PSSE), its robustness against bad data and the speed ...
Due to the unfavorable interference of non-Gaussian noise, abnormal system states, and rough measure...
This study considers the dynamic state estimation of power systems with model uncertainties that mig...
In this paper, we propose an optimal robust state estimator using maximum likelihood optimization wi...
Kalman-based state estimators assume a priori knowledge of the covariance matrices of the process an...
In power system state estimation, the robust Least Absolute Value robust dynamic estimator is well-k...
The weighted least squares (WLS) estimator is commonly employed to solve the state estimation proble...
In this paper, we proposed to evaluate the optimal phasor measurement unit (PMU) placement based on ...
In this paper, we proposed to evaluate the optimal phasor measurement unit (PMU) placement based on ...
In realistic power system state estimation, the distribution of measurement noise is usually assumed...
In a power system, it is known that parameters may carry small errors due to the weather conditions,...
Power system state estimation (PSSE) plays an important role in power system operation. The Gaussia...
This paper develops an adaptive robust cubature Kalman lter (ARCKF) that is able to mitigate the adv...
Due to the unfavorable interference of non-Gaussian noise, abnormal system states, and rough measure...
State estimation plays a key role in the operation of power systems. This role becomes more importan...
The accuracy of power system state estimation (PSSE), its robustness against bad data and the speed ...
Due to the unfavorable interference of non-Gaussian noise, abnormal system states, and rough measure...
This study considers the dynamic state estimation of power systems with model uncertainties that mig...
In this paper, we propose an optimal robust state estimator using maximum likelihood optimization wi...
Kalman-based state estimators assume a priori knowledge of the covariance matrices of the process an...