The Multiple Model Adaptive Power System State Estimator.

CDC(2021)

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摘要
In this paper, we model the generalized power system state estimation problem as a hybrid estimation problem in which the network configuration and voltage phasor states are treated as discrete and continuous states, respectively. We propose the Multiple model Adaptive Power system Stale Estimator (MAPSE), which implements a multiple model adaptive estimator with a bank of Unscented Kalman Filters (UKFs) to provide a running estimate of the voltage phasor states and a probability distribution for the candidate network configurations. The MAPSE updates the network configuration probability distribution by applying a Bayesian recursion to the measurement residuals from each of the UKFs at each timestep. Simulation on a modified version of the 33 node distribution network demonstrates successful network configuration detection and accurate voltage phasor state estimation.
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关键词
hybrid estimation problem,voltage phasor states,discrete states,continuous states,Multiple model Adaptive Power system State Estimator,multiple model adaptive estimator,running estimate,network configuration probability distribution,accurate voltage phasor state estimation,generalized power system state estimation problem,unscented Kalman filters
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