Litcius/Paper detail

A Machine Learning-Based Reliability Evaluation Model for Integrated Power-Gas Systems

Shuai Li, Tao Ding, Chenggang Mu, Can Huang, Mohammad Shahidehpour

2021IEEE Transactions on Power Systems36 citationsDOIOpen Access PDF

Abstract

This paper proposes a machine learning method for the reliability evaluation of integrated power-gas systems (IPGS) under the uncertain component failure probability distributions. The Random Forest (RF) method is designed to select important features to solve the insufficient quantity of data and the curse of dimensionality problems. The Extreme Gradient Boosting (XGBoost) regression algorithm is developed to quantify the relationship between the uncertain parameters and reliability metrics. Moreover, a ten-fold cross-validation method is employed to further improve the accuracy of the regression model. Simulation results on three test systems show that the proposed method can achieve high accuracy for the reliability evaluation.

Topics & Concepts

Reliability (semiconductor)Curse of dimensionalityRandom forestBoosting (machine learning)Computer scienceReliability engineeringGradient boostingElectric power systemMachine learningExtreme learning machineComponent (thermodynamics)Artificial intelligenceData miningPower (physics)EngineeringArtificial neural networkThermodynamicsQuantum mechanicsPhysicsIntegrated Energy Systems OptimizationPower System Reliability and MaintenanceProbabilistic and Robust Engineering Design
A Machine Learning-Based Reliability Evaluation Model for Integrated Power-Gas Systems | Litcius