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Probabilistic Stacked Denoising Autoencoder for Power System Transient Stability Prediction With Wind Farms

Tong Su, Youbo Liu, Junbo Zhao, Junyong Liu

2020IEEE Transactions on Power Systems56 citationsDOI

Abstract

To address the uncertainties of renewable energy and loads in transient stability assessment with credible contingencies, this letter proposes a stacked denoising autoencoder (SDAE)-based probabilistic prediction method. The correlations among wind farms have been effectively considered through the variable transformation via the Cholesky decomposition. SDAE allows learning the mapping relationship between operational features and the transient stability margin. The possible operation scenarios are sampled under different confidence levels to generate appropriate inputs for SDAE to assess the probabilistic transient stability distribution. Results on the modified IEEE 39-bus system show that our proposed method can achieve a similar level of accuracy as the benchmark and improved Monte Carlo simulations-based methods while having much higher computational efficiency.

Topics & Concepts

Electric power systemProbabilistic logicTransient (computer programming)Wind powerBenchmark (surveying)Stability (learning theory)Computer scienceCholesky decompositionControl theory (sociology)EngineeringMathematical optimizationReliability engineeringPower (physics)Artificial intelligenceMathematicsMachine learningEigenvalues and eigenvectorsElectrical engineeringPhysicsQuantum mechanicsGeodesyOperating systemControl (management)GeographyPower System Optimization and StabilityPower System Reliability and MaintenanceEnergy Load and Power Forecasting
Probabilistic Stacked Denoising Autoencoder for Power System Transient Stability Prediction With Wind Farms | Litcius