CORROSION PROGNOSTICS FOR OFFSHORE WIND- TURBINE STRUCTURES USING BAYESIAN FILTERING WITH BI-MODAL AND LINEAR DEGRADATION MODELS

R. Brijder, Stijn Helsen, A. Ompusunggu
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引用次数: 2

Abstract

New offshore wind farms are often operating far from the shore and under challenging operating conditions, making manual on-site inspections expensive. Therefore, there is a growing need for remote condition monitoring and prognostics systems for such offshore wind farms. In this paper, we focus on corrosion prognosis since corrosion is a major failure mode of offshore wind turbine structures. In particular, we propose two algorithms for corrosion prognosis by employing Bayesian filtering techniques, one is based on linear degradation and another is based on a bi-modal corrosion model. Due to distinct characteristics of the two degradation models, different Bayesian filtering implementations are therefore required. Although the degradation model of the latter method more accurately reflects the ground truth, we find that the former prognosis method is computationally more efficient and likely more robust against various noise sources.
基于贝叶斯滤波的双模态和线性退化模型的海上风力发电机结构腐蚀预测
新的海上风电场通常在远离海岸的地方运行,并且在具有挑战性的运行条件下运行,这使得人工现场检查成本高昂。因此,对这种海上风电场的远程状态监测和预测系统的需求日益增长。由于腐蚀是海上风力发电机组结构的主要失效模式,因此本文主要关注腐蚀预测。特别是,我们提出了两种采用贝叶斯滤波技术的腐蚀预测算法,一种是基于线性退化的,另一种是基于双峰腐蚀模型的。由于两种退化模型的不同特征,因此需要不同的贝叶斯过滤实现。虽然后一种方法的退化模型更准确地反映了地面真实情况,但我们发现前一种预测方法在计算上更有效,并且对各种噪声源的鲁棒性更强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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