A performance and maintenance evaluation framework for wind turbines

P. Mazidi, Mian Du, Lina Bertling Tjernberg, M. A. Sanz Bobi
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引用次数: 16

Abstract

In this paper, a data driven framework for performance and maintenance evaluation (PAME) of wind turbines (WT) is proposed. To develop the framework, SCADA data of WTs are adopted and several parameters are carefully selected to create a normal behavior model. This model which is based on Neural Networks estimates operation of WT and aberrations are collected as deviations. Afterwards, in order to capture patterns of deviations, self-organizing map is applied to cluster the deviations. From investigations on deviations and clustering results, a time-discrete finite state space Markov chain is built for mid-term operation and maintenance evaluation. With the purpose of performance and maintenance assessment, two anomaly indexes are defined and mathematically formulated. Moreover, Production Loss Profit is defined for Preventive Maintenance efficiency assessment. By comparing the indexes calculated for 9 WTs, current performance and maintenance strategies can be evaluated, and results demonstrate capability and effectiveness of the proposed framework.
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风力涡轮机性能和维护评估框架
提出了一种风力发电机组性能与维护评估的数据驱动框架。为了开发该框架,采用了WTs的SCADA数据,并精心选择了几个参数来创建一个正常的行为模型。该模型基于神经网络估计小波变换的运算,并收集畸变作为偏差。然后,为了捕获偏差的模式,应用自组织映射对偏差进行聚类。通过对偏差和聚类结果的研究,建立了一个时间离散的有限状态空间马尔可夫链,用于中期运维评估。以性能和维护评估为目的,定义了两个异常指标,并给出了数学公式。并对生产损失利润进行了定义,用于预防性维修效率评价。通过对9个WTs计算的指标进行比较,可以评估当前的性能和维护策略,结果表明了所提出框架的能力和有效性。
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