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An evolving classification approach for fault diagnosis and prognosis of a wind farm

机译:用于风电场故障诊断和预后的进化分类方法

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A wind farm is a complex system composed of several wind turbines operating in a non-stationary environment. Each of the wind turbines is subject to sudden and gradual faults due to operational and environmental conditions, aging etc. In order to assure an optimal power production and reduce maintenance costs, these faults have to be detected, isolated as soon as possible, and predicted. In this paper, an evolving classification method is proposed to achieve these requirements. The proposed approach is data-driven and does not require prior physical knowledge, in particular wind dynamics. It is based on the dynamic classification algorithm AUDyC. The considered features are determined according to the difference between generated electric powers regarding several operating modes. Normal operating modes are represented by classes in a decision space. Each new measure is classified on line. Indicators are computed to detect and isolate the occurrence of faults. Finally, a predictive method is implemented to forecast the degradation state of the wind turbine. A wind farm benchmark model, proposed for a fault diagnosis and fault tolerant control competition is used to highlight the efficiency of the proposed approaches.
机译:风电场是由在非平稳环境中运行的多个风力涡轮机组成的复杂系统。由于操作和环境条件,老化等原因,每台风力涡轮机均会遭受突然的渐进式故障。为了确保最佳的发电量并降低维护成本,必须对这些故障进行检测,尽快隔离和预测。本文提出了一种进化的分类方法来满足这些要求。所提出的方法是数据驱动的,不需要先验的物理知识,特别是风动力学。它基于动态分类算法AUDyC。所考虑的特征是根据有关几种操作模式的发电功率之间的差异确定的。正常操作模式由决策空间中的类表示。每个新度量均在线分类。计算指标以检测和隔离故障的发生。最后,采用一种预测方法来预测风力涡轮机的退化状态。为故障诊断和容错控制竞争而提出的风电场基准模型被用来强调所提出方法的效率。

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