In this study, we present methods of optimization-based power system state estimation over sensor networks. By minimizing a composite loss function while ensuring that the state, disturbance, and measurement noise constraints are satisfied, the best or better state estimates are iteratively computed. The proposed distributed computational methods for power system state estimation are based on operator splitting. Our methods are computationally decomposable over sensor networks, so distributed and parallel computing can be applied. They can systematically handle the constraints of the state variables and noise as well as disturbances, such that the negative effects of bad data and parametric model uncertainty can automatically be reduced in ...
International audienceThis paper focuses on distributed state estimation for sensor network observin...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
In this paper, a distributed state estimation method based on moving horizon estimation (MHE) is pro...
This paper studies a distributed state estimation problem for a network of linear dynamic systems (c...
This paper studies a state estimation problem for a networked dynamic system characterized by a comm...
© 2017 IEEE. In contrast to the traditional centralized power system state estimation methods, this ...
In traditional power system state estimation application, the distribution of measurement noise is f...
This paper studies a dynamic state estimation problem for power systems, which can be seen as the qu...
This thesis proposes a set of novel partition-based moving-horizon state estimation schemes for syst...
© 2017 In contrast to the traditional centralised power system state estimation methods, this paper ...
This paper focuses on distributed state estimation using a sensor network for monitoring a linear sy...
We adapt and apply a known algorithm for Distributed Moving Horizon Estimation (DMHE) to power syste...
This work presents a distributed method for control centers to monitor the operating condition of a ...
This work presents a distributed method for control centers to monitor the operating condition of a ...
International audienceThis paper focuses on distributed state estimation for sensor network observin...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...
In this paper, a distributed state estimation method based on moving horizon estimation (MHE) is pro...
This paper studies a distributed state estimation problem for a network of linear dynamic systems (c...
This paper studies a state estimation problem for a networked dynamic system characterized by a comm...
© 2017 IEEE. In contrast to the traditional centralized power system state estimation methods, this ...
In traditional power system state estimation application, the distribution of measurement noise is f...
This paper studies a dynamic state estimation problem for power systems, which can be seen as the qu...
This thesis proposes a set of novel partition-based moving-horizon state estimation schemes for syst...
© 2017 In contrast to the traditional centralised power system state estimation methods, this paper ...
This paper focuses on distributed state estimation using a sensor network for monitoring a linear sy...
We adapt and apply a known algorithm for Distributed Moving Horizon Estimation (DMHE) to power syste...
This work presents a distributed method for control centers to monitor the operating condition of a ...
This work presents a distributed method for control centers to monitor the operating condition of a ...
International audienceThis paper focuses on distributed state estimation for sensor network observin...
This thesis considers state estimation strategies for networked systems. State estimation refers to ...
This paper presents a novel distributed estimation algorithm based on the concept of moving horizon ...