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Wind turbine pitch faults prognosis using a-priori knowledge-based ANFIS

机译:基于先验知识的ANFIS的风力发电机俯仰故障预测

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The fast growing wind industry has shown a need for more sophisticated fault prognosis analysis in the critical and high value components of a wind turbine (WT). Current WT studies focus on improving their reliability and reducing the cost of energy, particularly when WTs are operated offshore. WT Supervisory Control and Data Acquisition (SCADA) systems contain alarms and signals that could provide an early indication of component fault and allow the operator to plan system repair prior to complete failure. Several research programmes have been made for that purpose; however, the resulting cost savings are limited because of the data complexity and relatively low number of failures that can be easily detected in early stages. A new fault prognosis procedure is proposed in this paper using a-priori knowledge-based Adaptive Neuro-Fuzzy Inference System (ANFIS). This has the aim to achieve automated detection of significant pitch faults, which are known to be significant failure modes. With the advantage of a-priori knowledge incorporation, the proposed system has improved ability to interpret the previously unseen conditions and thus fault diagnoses are improved. In order to construct the proposed system, the data of the 6 known WT pitch faults were used to train the system with a-priori knowledge incorporated. The effectiveness of the approach was demonstrated using three metrics: (1) the trained system was tested in a new wind farm containing 26 WTs to show its prognosis ability; (2) the first test result was compared to a general alarm approach; (3) a Confusion Matrix analysis was made to demonstrate the accuracy of the proposed approach. The result of this research has demonstrated that the proposed a-priori knowledge-based ANFIS (APK-ANFIS) approach has strong potential for WT pitch fault prognosis.
机译:快速发展的风能行业已经显示出需要对风力涡轮机(WT)的关键和高价值组件进行更复杂的故障预测分析。当前的WT研究集中在提高其可靠性和降低能源成本上,特别是当WT在海上运行时。 WT监督控制和数据采集(SCADA)系统包含警报和信号,可提供组件故障的早期指示,并允许操作员在完全故障之前计划系统维修。为此已经制定了一些研究计划。但是,由于数据的复杂性以及可以在早期阶段轻松检测到的故障数量相对较少,因此节省的成本有限。本文提出了一种基于先验知识的自适应神经模糊推理系统(ANFIS)的故障预测新程序。这样做的目的是实现对重大螺距故障的自动检测,已知这些故障是重大故障模式。借助先验知识的结合,所提出的系统具有更高的解释先前未见情况的能力,从而改善了故障诊断。为了构建所提出的系统,使用了6个已知WT音调故障的数据来训练具有先验知识的系统。使用三个指标证明了该方法的有效性:(1)在包含26个WT的新风电场中对经过训练的系统进行了测试,以显示其预后能力; (2)将第一个测试结果与一般报警方法进行了比较; (3)进行了混淆矩阵分析,以证明所提出方法的准确性。这项研究的结果表明,所提出的基于先验知识的ANFIS(APK-ANFIS)方法在WT音调故障预后中具有强大的潜力。

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