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Probabilistic Prognosis of Wind Turbine Faults With Feature Selection and Confidence Calibration

Jian Xu, Xinxiong Jiang, Siyang Liao, Deping Ke, Yuanzhang Sun, Liangzhong Yao, Beilin Mao

2023IEEE Transactions on Sustainable Energy15 citationsDOI

Abstract

With the ever-increasing expansion of the installed capacity of wind power generation, reliable condition monitoring for wind turbines (WTs) has become increasingly important. To this end, this paper proposes a probabilistic WT fault prognosis (WTFP) scheme to output reliable fault probabilities in addition to class predictions. First, a multivariate time series (MTS) based mutual information estimator (MIE) is developed to integrate with combinational optimization, selecting features that contain more beneficial temporal data patterns for WTFP. Then, a multi-fault prognosis model for WTs is trained based on the selected features and MTS learning network. Next, a confidence calibration (CC) post-processing module is appended to re-construct the mapping relation between network logits and posterior probabilities by minimizing negative log-likelihood, thereby calibrating confidence estimates to approximate the true correctness likelihood as much as possible while keeping the high accuracy of the trained MTS learning network. These components finally drive a comprehensive WTFP model. Test results on the field data of WT verify the efficacy of MTS-based MIE and CC, and show that the proposed probabilistic WTFP scheme can provide more reliable probability estimates, contributing to better decision-making.

Topics & Concepts

Probabilistic logicComputer scienceWind powerCorrectnessEstimatorBayesian networkCalibrationFeature selectionFault (geology)TurbineData miningArtificial intelligenceEngineeringAlgorithmStatisticsMathematicsGeologyElectrical engineeringSeismologyMechanical engineeringMachine Fault Diagnosis TechniquesEnergy Load and Power ForecastingPower System Reliability and Maintenance
Probabilistic Prognosis of Wind Turbine Faults With Feature Selection and Confidence Calibration | Litcius