Accurate information about dynamic states is important for efficient control and operation of a power system. This paper compares the performance of four Bayesian-based filtering approaches in estimating dynamic states of a synchronous machine using phasor measurement unit data. The four methods are extended Kalman filter, unscented Kalman filter, ensemble Kalman filter, and particle filter. The statistical performance of each algorithm is compared using Monte Carlo methods and a two-area-four-machine test system. Under the statistical framework, robustness against measurement noise and process noise, sensitivity to sampling interval, and computation time are evaluated and compared for each approach. Based on the comparison, this paper make...
In this brief, a hybrid filter algorithm is developed to deal with the state estimation (SE) problem...
Abstract- An important tool for Energy Management Systems (EMS) is state estimation. Based on measur...
This paper presents a dynamic state estimation method based on the least mean square algorithm to in...
Accurate information about dynamic states is important for efficient control and operation of a powe...
Data from phasor measurement units (PMUs) may be exploited to provide steady state information to th...
The dissertation research investigates estimating of power system static and dynamic states (e.g. ro...
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 ...
Previously, conventional state estimation techniques have been used for state estimation in power sy...
This dissertation tackles the online estimation of synchronous machines\u27 power subsystems electro...
The purpose of this research is mainly to develop a distributed dynamic state estimation with PMU an...
Abstract This work presents a hybrid state estimation procedure that allows power system dynamics as...
The electrical network measurements by measuring device Phasor Measurement Device (PMU) are usually ...
Emami, K ORCiD: 0000-0001-5614-4861This paper presents a novel particle filter based dynamic state e...
This paper presents a new Kalman filter approach to Power System State Estimation based on PMUs, in ...
In this brief, a hybrid filter algorithm is developed to deal with the state estimation (SE) problem...
Abstract- An important tool for Energy Management Systems (EMS) is state estimation. Based on measur...
This paper presents a dynamic state estimation method based on the least mean square algorithm to in...
Accurate information about dynamic states is important for efficient control and operation of a powe...
Data from phasor measurement units (PMUs) may be exploited to provide steady state information to th...
The dissertation research investigates estimating of power system static and dynamic states (e.g. ro...
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 ...
Previously, conventional state estimation techniques have been used for state estimation in power sy...
This dissertation tackles the online estimation of synchronous machines\u27 power subsystems electro...
The purpose of this research is mainly to develop a distributed dynamic state estimation with PMU an...
Abstract This work presents a hybrid state estimation procedure that allows power system dynamics as...
The electrical network measurements by measuring device Phasor Measurement Device (PMU) are usually ...
Emami, K ORCiD: 0000-0001-5614-4861This paper presents a novel particle filter based dynamic state e...
This paper presents a new Kalman filter approach to Power System State Estimation based on PMUs, in ...
In this brief, a hybrid filter algorithm is developed to deal with the state estimation (SE) problem...
Abstract- An important tool for Energy Management Systems (EMS) is state estimation. Based on measur...
This paper presents a dynamic state estimation method based on the least mean square algorithm to in...