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Quantification of the Information Loss Resulting from Temporal Aggregation of Wind Turbine Operating Data

Mattia Beretta, Karoline Pelka, J. Cusidó, Timo Lichtenstein

2021Applied Sciences13 citationsDOIOpen Access PDF

Abstract

SCADA operating data are more and more used across the wind energy domain, both as a basis for power output prediction and turbine health status monitoring. Current industry practice to work with this data is by aggregating the signals at coarse resolution of typically 10-min averages, in order to reduce data transmission and storage costs. However, aggregation, i.e., downsampling, induces an inevitable loss of information and is one of the main causes of skepticism towards the use of SCADA operating data to model complex systems such as wind turbines. This research aims to quantify the amount of information that is lost due to this downsampling of SCADA operating data and characterize it with respect to the external factors that might influence it. The issue of information loss is framed by three key questions addressing effects on the local and global scale as well as the influence of external conditions. Moreover, recommendations both for wind farm operators and researchers are provided with the aim to improve the information content. We present a methodology to determine the ideal signal resolution that minimized storage footprint, while guaranteeing high quality of the signal. Data related to the wind, electrical signals, and temperatures of the gearbox resulted as the critical signals that are largely affected by an information loss upon aggregation and turned out to be best recorded and stored at high resolutions. All analyses were carried out using more than one year of 1 Hz SCADA data of onshore wind farm counting 12 turbines located in the UK.

Topics & Concepts

SCADATurbineWind powerComputer scienceData lossUpsamplingData qualityReliability engineeringEnvironmental scienceReal-time computingEngineeringElectrical engineeringDatabaseOperations managementImage (mathematics)Artificial intelligenceMechanical engineeringMetric (unit)Energy Load and Power ForecastingWind Energy Research and DevelopmentMachine Fault Diagnosis Techniques
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