Abstract

The operation and maintenance costs of offshore wind farms can be significantly reduced if existing corrective actions are performed as efficient as possible and if future corrective actions are avoided by performing sufficient preventive actions. In this paper a prognostic model for degradation monitoring, fault prediction and predictive maintenance of offshore wind components is defined.The diagnostic model defined in this paper is based on degradation, remaining useful lifetime and hybrid inspection threshold models. The defined degradation model is based on an exponential distribution with stochastic scale factor modelled by a normal distribution. Once based on failures, inspection or condition monitoring data sufficient observations on the degradation level of a component are available, using Bayes’ rule and Normal-Normal model prior exponential parameters of the degradation model can be updated. The components of the diagnostic model defined in this paper are further explained within several illustrative examples. At the end, conclusions are given and recommendations for future studies on this topic are discussed.

Highlights

  • The offshore wind energy is the fastest growing power sector in Europe, set to have a fivefold increase in installed capacity by 2030 (Tardieu et al 2017)

  • Majority of operation and maintenance (O&M) costs of offshore wind farms is caused by unplanned failure of wind farm components (Asgarpour & Sørensen 2015)

  • The prognostic model defined in this paper is based on degradation and remaining useful lifetime of wind farm components

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Summary

INTRODUCTION

The offshore wind energy is the fastest growing power sector in Europe, set to have a fivefold increase in installed capacity by 2030 (Tardieu et al 2017). The costs of unplanned failures can be reduced significantly if faults of wind farm components can be predicted, before they occur, or be detected, as soon as they occur and before they lead to a failure. In (Asgarpour & Sørensen 2018), a Bayesian diagnostic model for fault detection and condition based maintenance of offshore wind farm components is introduced. This paper focuses only on fault prediction or prognostics of offshore wind components. Authors in (Novaes et al 2018) have concluded that in contrary to diagnostics, very little attention has been given to the application of prognostic techniques in wind turbines. First degradation and remaining useful lifetime models are briefly discussed and within several illustrative examples a prognostic model for predictive maintenance of offshore wind components is outlined. International Journal of Prognostics and Health Management, ISSN 2153-2648, 2018 010

DEGRADATION MODELLING
Initial degradation model
Updating the degradation model
Updating of scale factor
Updating of shape factor
RUL MODELLING
PROGNOSTIC MODEL
Degradation based threshold
RUL based threshold
CONCLUSIONS
Findings
Methods
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