Publication | Open Access
A Hierarchical Self-Adaptive Data-Analytics Method for Real-Time Power System Short-Term Voltage Stability Assessment
166
Citations
36
References
2018
Year
Electrical EngineeringReliability EngineeringReal-time Stvs AssessmentMachine LearningSmart GridEnergy ManagementStvs AssessmentEngineeringPower Grid OperationComputer EngineeringBenchmark Power SystemSystems EngineeringGrid StabilityPower System ProtectionPower System TransientPower SystemsPower System AnalysisStability
As one of the most complex and largest dynamic industrial systems, a modern power grid envisages the wide-area measurement protection and control (WAMPAC) system as the grid sensing backbone to enhance security, reliability, and resiliency. However, based on the massive wide-area measurement data, how to realize real-time short-term voltage stability (STVS) assessment is an essential yet challenging problem. This paper proposes a hierarchical and self-adaptive data-analytics method for real-time STVS assessment covering both the voltage instability and the fault-induced delayed voltage recovery phenomenon. Based on a strategically designed ensemble-based randomized learning model, the STVS assessment is achieved sequentially and self-adaptively. Besides, the assessment accuracy and the earliness are simultaneously optimized through the multiobjective programming. The proposed method has been tested on a benchmark power system, and its exceptional assessment accuracy, speed, and comprehensiveness are demonstrated by comparing with existing methods.
| Year | Citations | |
|---|---|---|
Page 1
Page 1