Publication | Closed Access
Decentralized State Estimation and Bad Measurement Identification: An Efficient Lagrangian Relaxation Approach
49
Citations
25
References
2011
Year
Mathematical ProgrammingState EstimationBad Measurement IdentificationParameter IdentificationBad MeasurementsEngineeringStatistical Signal ProcessingUncertainty QuantificationDecentralized State-estimation ApproachSystems EngineeringInverse ProblemsComputer ScienceCentral CoordinatorSensor PlacementEstimation TheorySystem IdentificationLocalizationSignal Processing
This paper proposes a decentralized state-estimation approach that relies on an elaborated instance of the Lagrangian relaxation decomposition technique. The proposed algorithm does not require a central coordinator but just to moderate interchanges of information among neighboring regions, and exploits the structure of the problem to achieve a fast and accurate convergence. Additionally, a decentralized bad measurement identification procedure is developed, which is efficient and robust in terms of identifying bad measurements within regions and in border tie-lines. The accuracy and efficiency of the proposed procedures are assessed by a large number of simulations, which allows drawing statistically sound conclusions.
| Year | Citations | |
|---|---|---|
Page 1
Page 1