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RESEARCH PRODUCT

Weather sensor fault detection in meteorological masts

Maximo IaconisFranco Piergallini GuidaFilippo Visco-comandini

subject

Wind powerSCADAbusiness.industryPrognosticsEnvironmental scienceComputerApplications_COMPUTERSINOTHERSYSTEMSAnomaly detectionbusinessTurbineMaintenance engineeringTowerFault detection and isolationMarine engineering

description

Wind power has become the world’s fastest growing renewable technology. The world-wide wind power installed capacity has exceeded 597 GW, and the new installations during the last three years was an average of 50 GW per year. A major issue with wind power system and with meteorological masts is the relatively high cost of operation and maintenance (OM). Wind turbines and sensor towers are hard-to-access structures, and they are often located in remote areas. That’s why continuous monitoring of wind turbine health using automated failure detection algorithms can improve turbine reliability and reduce maintenance costs by detecting failures before they reach a catastrophic stage and by eliminating unnecessary scheduled maintenance. Most of the wind turbines and meteorological masts have supervisory control and data acquisition (SCADA) system and it rapidly became the standard. SCADA data analysis has been used in other industries for accurate and timely detection, diagnostics and prognostics of failures and performance problems. In the present work, mathematical methods are proposed for sensor fault detection for meteorological masts through the analysis of the SCADA data. The idea is to compare and analyze measurements coming from the various sensors located in the same tower and different heights. We used a number of measurements to develop anomaly detection algorithms and investigated classification techniques using manual check and model parameter tuning. These methods are tested on wind masts situated in Argentina.

https://doi.org/10.1109/argencon49523.2020.9505429