Abstract It has recently been shown that state estimation (SE), which is the most important real-time function in modern energy management systems (EMSs), is vulnerable to false data injection attacks, due to the undetectability of those attacks using standard bad data detection techniques, which are typically based on normalized measurement residuals. Therefore, it is of the utmost importance to develop novel and efficient methods that are capable of detecting such malicious attacks. In this paper, we propose using the unscented Kalman filter (UKF) in conjunction with a weighted least square (WLS) based SE algorithm in real-time, to detect discrepancies between SV estimates and, as a consequence, to identify false data attacks. After an at...
Wide area monitoring systems (WAMSs) are used to measure synchrophasor data at different locations a...
The transformation of traditional energy networks to smart grids can assist in revolutionizing the e...
This paper is devoted to studying the effect of false data injection attacks on the state estimation...
State estimation plays a vital role to ensure safe and reliable operations in smart grid. Intelligen...
The smart grid accessibility over the Internet of Things (IoT) is becoming attractive to electrical ...
Abstract—By exploiting the communication infrastructure among the sensors, actuators, and control sy...
State Estimation is a traditional and reliable technique within power distribution and control syste...
Kalman Filtering and statistical decision making criteria are used to develop a systematic method fo...
Kalman Filtering and statistical decision making criteria are used to develop a systematic method fo...
Kalman Filtering and statistical decision making criteria are used to develop a systematic method fo...
The secure operation of smart grids is closely linked to state estimates that accurately reflect the...
Kalman Filtering and statistical decision making criteria are used to develop a systematic method fo...
Kalman Filtering and statistical decision making criteria are used to develop a systematic method fo...
Abstract—A power grid is a complex system connecting electric power generators to consumers through ...
The evolution of traditional energy networks toward smart grids increases security vulnerabilities i...
Wide area monitoring systems (WAMSs) are used to measure synchrophasor data at different locations a...
The transformation of traditional energy networks to smart grids can assist in revolutionizing the e...
This paper is devoted to studying the effect of false data injection attacks on the state estimation...
State estimation plays a vital role to ensure safe and reliable operations in smart grid. Intelligen...
The smart grid accessibility over the Internet of Things (IoT) is becoming attractive to electrical ...
Abstract—By exploiting the communication infrastructure among the sensors, actuators, and control sy...
State Estimation is a traditional and reliable technique within power distribution and control syste...
Kalman Filtering and statistical decision making criteria are used to develop a systematic method fo...
Kalman Filtering and statistical decision making criteria are used to develop a systematic method fo...
Kalman Filtering and statistical decision making criteria are used to develop a systematic method fo...
The secure operation of smart grids is closely linked to state estimates that accurately reflect the...
Kalman Filtering and statistical decision making criteria are used to develop a systematic method fo...
Kalman Filtering and statistical decision making criteria are used to develop a systematic method fo...
Abstract—A power grid is a complex system connecting electric power generators to consumers through ...
The evolution of traditional energy networks toward smart grids increases security vulnerabilities i...
Wide area monitoring systems (WAMSs) are used to measure synchrophasor data at different locations a...
The transformation of traditional energy networks to smart grids can assist in revolutionizing the e...
This paper is devoted to studying the effect of false data injection attacks on the state estimation...