Litcius/Paper detail

TempGNN: A Temperature-Based Graph Neural Network Model for System-Level Monitoring of Wind Turbines With SCADA Data

Guoqian Jiang, Wenyue Li, Weipeng Fan, Qun He, Ping Xie

2022IEEE Sensors Journal41 citationsDOI

Abstract

Accurate health monitoring and early fault warning are of critical importance to ensure the safe and reliable operation of wind turbines (WTs) and reduce operation and maintenance costs. For this reason, data-driven monitoring approaches have attracted considerable attention and have been widely studied. However, existing methods cannot well consider the interactions of different subsystems and components, thus often leading to missed detections and false alarms. To this end, we proposed a temperature-based graph neural network model named TempGNN to provide system-level monitoring for WTs with the available supervisory control and data acquisition (SCADA) data. TempGNN aims to automatically learn and capture the relationships between sensors from a graph structure data perspective. First, to eliminate the effects of time-varying operation conditions on temperature variables, a decoupled model is designed to obtain operation-independent temperature values. Then, an attention-based adaptive graph structure learning layer is designed to learn the weight matrix, and a spectral–temporal graph network block is introduced to capture spatial and temporal dependencies in graph data. Finally, anomaly detection can be performed through the calculation of health indicators defined with the residuals between the predicted outputs and the actual values. The effectiveness and robustness of the model were verified by two cases on a real SCADA dataset. The results show that our proposed TempGNN model can largely reduce false alarms and provide a reliable monitoring performance.

Topics & Concepts

SCADAComputer scienceRobustness (evolution)Data miningGraphCondition monitoringWind powerData modelingFault detection and isolationReal-time computingArtificial intelligenceEngineeringTheoretical computer scienceBiochemistryGeneActuatorElectrical engineeringDatabaseChemistryMachine Fault Diagnosis TechniquesEnergy Load and Power ForecastingPower System Reliability and Maintenance
TempGNN: A Temperature-Based Graph Neural Network Model for System-Level Monitoring of Wind Turbines With SCADA Data | Litcius