Abstract

High operation and maintenance costs for offshore wind turbines push up the LCOE of offshore wind energy. Unscheduled maintenance due to unanticipated failures is the most prominent driver of the maintenance cost which reinforces the drive towards condition-based maintenance. SCADA based condition monitoring is a cost-effective approach where power curve used to assess the performance of a wind turbine. Such power curves are useful in identification of wind turbine abnormal behaviour. IEC standard 61400-12-1 outlines the guidelines for power curve modelling based on binning. However, establishing such a power curve takes considerable time and is far too slow to reflect changes in performance to be used directly for condition monitoring. To address this, data-driven, nonparametric models being used instead. Gaussian Process models and regression trees are commonly used nonlinear, nonparametric models useful in forecasting and prediction applications. In this paper, two nonparametric methods are proposed for power curve modelling. The Gaussian Process treated as the benchmark model, and a comparative analysis was undertaken using a Regression tree model; the advantages and limitations of each model will be outlined. The performance of these regression models is validated using readily available SCADA datasets from a healthy wind turbine operating under normal conditions.

Highlights

  • Due to the global energy crisis and thrust for clean energy, the use of wind energy has increased dramatically in recent times with both onshore and offshore wind turbines in wide-scale use

  • The Gaussian process (GP) power curve has been compared with a regression tree/decision tree model and found to

  • Even though the time taken to run and evaluate the power curve algorithm is faster for the regression tree, it suffers from overfitting while the GP model strikes a right balance between algorithm smoothness and model optimisation time

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Summary

Introduction

Due to the global energy crisis and thrust for clean energy, the use of wind energy has increased dramatically in recent times with both onshore and offshore wind turbines in wide-scale use To sustain this growth, operation and maintenance (O&M) cost must be reduced. This paper proposes an intelligent SCADA data-driven, nonparametric approach to monitor the performance of turbine for active condition monitoring. Two nonparametric methods namely; Gaussian Process and Regression tree are used to estimate the power curve of a wind turbine; the comparative analysis is undertaken to identify operational anomalies.

Power curve of a wind turbine
SCADA data pre-processing
Power curve estimation using nonparametric models
Gaussian process
Regression tree
Manuscript preparation comparative analysis of the two models
Conclusion and future work
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