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CONDITION MONITORING WITH WIND TURBINE SCADA DATA USING NEURO-FUZZY NORMAL BEHAVIOR MODELS

机译:基于神经模糊正常行为模型的风轮机SCADA数据状态监测

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This paper presents the latest research results of a project that focuses on normal behavior models for condition monitoring of wind turbines and their components, via ordinary Supervisory Control And Data Acquisition (SCADA) data. In this machine learning approach Adaptive Neuro-Fuzzy Interference System (ANFIS) models are employed to learn the normal behavior in a training phase, where the component condition can be considered healthy. In the application phase the trained models are applied to predict the target signals, e.g. temperatures, pressures, currents, power output, etc. The behavior of the prediction error is used as an indicator for normal and abnormal behavior, with respect to the learned behavior. The advantage of this approach is that the prediction error is widely decoupled from the typical fluctuations of the SCADA data caused by the different turbine operational modes. To classify the component condition Fuzzy Interference System (FIS) structures are used. Based on rules that are established with the prediction error behavior during faults previously experienced and generic rules, the FIS outputs the component condition (green, yellow and red). Furthermore a first diagnosis of the root cause is given. In case of fault patterns earlier unseen the generic rules allow general statements about the signal behavior which highlight the anomaly. Within the current research project this method is applied to 18 onshore turbines of the 2 MW class operating since April 2009. First results show that the proposed method is well suited to closely monitor a large variety of signals, identify anomalies and correctly classify the component condition. The accuracy of the normal behavior models developed is high and small signal behavior changes become recognizable. The result of the automatic analysis is given in graphical and text format. Within the paper examples of real faults are provided, showing the capabilities of the method proposed. The method can be applied both to existing and new built turbines without the need of any additional hardware installation or manufacturers input.
机译:本文介绍了该项目的最新研究结果,该项目侧重于通过普通的监督控制和数据采集(SCADA)数据对风力涡轮机及其组件进行状态监控的正常行为模型。在这种机器学习方法中,采用自适应神经模糊干扰系统(ANFIS)模型来学习训练阶段的正常行为,在该阶段中,组件状态可以认为是健康的。在应用阶段,将训练后的模型应用于预测目标信号,例如目标信号。温度,压力,电流,功率输出等。相对于学习的行为,预测误差的行为用作正常和异常行为的指标。这种方法的优点是,预测误差与由不同涡轮机运行模式引起的SCADA数据的典型波动大为脱钩。为了对组件条件进行分类,使用了模糊干扰系统(FIS)结构。基于在先前经历的故障期间使用预测错误行为建立的规则和通用规则,FIS输出组件条件(绿色,黄色和红色)。此外,给出了根本原因的第一诊断。对于早期未发现的故障模式,通用规则允许对信号行为进行一般性陈述,以突出异常。在当前的研究项目中,该方法自2009年4月以来已应用于18台2 MW级的陆上涡轮机。第一结果表明,该方法非常适合于密切监视各种信号,识别异常并正确地对组件状况进行分类。所开发的正常行为模型的准确性很高,并且可以识别出很小的信号行为变化。自动分析的结果以图形和文本格式给出。在本文中,提供了实际故障的示例,显示了所提出方法的功能。该方法可以应用于现有和新建的涡轮机,而无需任何额外的硬件安装或制造商的投入。

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