This paper develops an adaptive robust cubature Kalman lter (ARCKF) that is able to mitigate the adverse effects of the innovation and observation outliers while ltering out the system and measurement noises. To develop the ARCKF dynamic state estimator, a batch-mode regression form in the framework of cubature Kalman lter is rst established by processing the predicted state and measurement data information simultaneously. Subsequently, based on the regression form, the outliers can be detected and down-weighted by the robust projection statistics approach. Then, the adverse effects of innovation and observation outliers can be effectively suppressed by the generalized maximum likelihood (GM)- type estimator utilizing the iteratively reweig...
Abstract The state estimation and the analysis of load flow are very important subjects in the anal...
This study considers the dynamic state estimation of power systems with model uncertainties that mig...
This paper presents a new adaptive random weighting cubature Kalman filtering method for nonlinear s...
Due to the unfavorable interference of non-Gaussian noise, abnormal system states, and rough measure...
Due to the unfavorable interference of non-Gaussian noise, abnormal system states, and rough measure...
In power system communication and control, the wide-area measurement system (WAMS) is usually advers...
As electricity demand continues to grow and renewable energy increases its penetration in the power ...
As electricity demand continues to grow and renewable energy increases its penetration in the power ...
Kalman filters (KFs) and dynamic observers are two main classes of the dynamic state estimation (DSE...
Bad data may lead to performance degradation or even instability of a power system, which can be cau...
Accurate forecasting-aided state estimation plays a vital role in reliable and secure operation of p...
Modern power systems are constantly subjected to various disturbances, device failures, as well as d...
Kalman filter is one of the best filter utilized as a part of the state estimation taking into accou...
The electrical network measurements by measuring device Phasor Measurement Device (PMU) are usually ...
AbstractPower system state estimation holds great relevance with increasing concern about system rel...
Abstract The state estimation and the analysis of load flow are very important subjects in the anal...
This study considers the dynamic state estimation of power systems with model uncertainties that mig...
This paper presents a new adaptive random weighting cubature Kalman filtering method for nonlinear s...
Due to the unfavorable interference of non-Gaussian noise, abnormal system states, and rough measure...
Due to the unfavorable interference of non-Gaussian noise, abnormal system states, and rough measure...
In power system communication and control, the wide-area measurement system (WAMS) is usually advers...
As electricity demand continues to grow and renewable energy increases its penetration in the power ...
As electricity demand continues to grow and renewable energy increases its penetration in the power ...
Kalman filters (KFs) and dynamic observers are two main classes of the dynamic state estimation (DSE...
Bad data may lead to performance degradation or even instability of a power system, which can be cau...
Accurate forecasting-aided state estimation plays a vital role in reliable and secure operation of p...
Modern power systems are constantly subjected to various disturbances, device failures, as well as d...
Kalman filter is one of the best filter utilized as a part of the state estimation taking into accou...
The electrical network measurements by measuring device Phasor Measurement Device (PMU) are usually ...
AbstractPower system state estimation holds great relevance with increasing concern about system rel...
Abstract The state estimation and the analysis of load flow are very important subjects in the anal...
This study considers the dynamic state estimation of power systems with model uncertainties that mig...
This paper presents a new adaptive random weighting cubature Kalman filtering method for nonlinear s...