Abstract

A novel and innovative solution addressing wind turbines’ main bearing failure predictions using SCADA data is presented. This methodology enables to cut setup times and has more flexible requirements when compared to the current predictive algorithms. The proposed solution is entirely unsupervised as it does not require the labeling of data through work orders logs. Results of interpretable algorithms, which are tailored to capture specific aspects of main bearing failures, are merged into a combined health status indicator making use of Ensemble Learning principles. Based on multiple specialized indicators, the interpretability of the results is greater compared to black-box solutions that try to address the problem with a single complex algorithm. The proposed methodology has been tested on a dataset covering more than two year of operations from two onshore wind farms, counting a total of 84 turbines. All four main bearing failures are anticipated at least one month of time in advance. Combining individual indicators into a composed one proved effective with regard to all the tracked metrics. Accuracy of 95.1%, precision of 24.5% and F1 score of 38.5% are obtained averaging the values across the two windfarms. The encouraging results, the unsupervised nature and the flexibility and scalability of the proposed solution are appealing, making it particularly attractive for any online monitoring system used on single wind farms as well as entire wind turbine fleets.

Highlights

  • IntroductionNew turbines are being installed, technologies are improving and costs are decreasing

  • The future is bright for wind energy

  • In large wind farms operation and maintenance (O&M) costs can account up to 30% of the total cost of energy, the influence of physical maintenance is estimated around 20% of the levelized cost of electricity (LCOE) [3]

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Summary

Introduction

New turbines are being installed, technologies are improving and costs are decreasing. IRENA estimates a tumultuous growth for the industry, expecting a global installed capacity of 1000 GW by 2050, and new installations rate of 200 GW/yr, including replacement of old turbines [1]. By the end of 2019 Europe alone boasted 205 GW of installed wind power capacity [2]. In large wind farms O&M costs can account up to 30% of the total cost of energy, the influence of physical maintenance is estimated around 20% of the levelized cost of electricity (LCOE) [3]. The growth of offshore installation, which accounted for 22 GW of power capacity in Europe in 2019 [2], exacerbates the problem as logistics becomes even more challenging

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