Distributed Moving Horizon Estimation via Operator Splitting for Automated Robust Power System State Estimation

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초록

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 the estimation. For demonstration, the IEEE 118-bus power system dynamic state estimation problem is considered. The results are compared to the ones obtained from a distributed extended Kalman filter. It is shown that compared with a distributed extended Kalman filter, the proposed method achieves improved robustness against adversarial data defection.

키워드

State estimationVoltage measurementPower measurementPower systemsPower system dynamicsNoise measurementTransmission line measurementsPower system state estimationdynamic state estimationmoving horizon estimationdistributed constrained optimizationoperating splitting methodrobust estimationbad data detectioncyber data attackKALMAN-FILTERCONSENSUSNETWORK
제목
Distributed Moving Horizon Estimation via Operator Splitting for Automated Robust Power System State Estimation
저자
Kim, JinsungKang, Ji-HanBae, JinwooLee, WonhyungKim, Kwang-Ki K.
DOI
10.1109/ACCESS.2021.3091706
발행일
2021
유형
Article
저널명
IEEE Access
9
페이지
90428 ~ 90440