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Wind turbine condition monitoring based on SCADA data using normal behavior models. Part 2: Application examples

机译:使用常规行为模型基于SCADA数据的风力发电机状态监测。第2部分:应用示例

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This paper is part two of a two part series. The originality of part one was the proposal of a novelty approach for wind turbine supervisory control and data acquisition (SCADA) data mining for condition monitoring purposes. The novelty concerned the usage of adaptive neuro-fuzzy interference system (ANFIS) models in this context and the application of a proposed procedure to a wide range of different SCADA signals. The applicability of the set up ANFIS models for anomaly detection was proven by the achieved performance of the models. In combination with the fuzzy interference system (FIS) proposed the prediction errors provide information about the condition of the monitored components. Part two presents application examples illustrating the efficiency of the proposed method. The work is based on continuously measured wind turbine SCADA data from 18 modern type pitch regulated wind turbines of the 2 MW class covering a period of 35 months. Several real life faults and issues in this data are analyzed and evaluated by the condition monitoring system (CMS) and the results presented. It is shown that SCADA data contain crucial information for wind turbine operators worth extracting. Using full signal reconstruction (FSRC) adaptive neuro-fuzzy interference system (ANFIS) normal behavior models (NBM) in combination with fuzzy logic (FL) a setup is developed for data mining of this information. A high degree of automation can be achieved. It is shown that FL rules established with a fault at one turbine can be applied to diagnose similar faults at other turbines automatically via the CMS proposed. A further focus in this paper lies in the process of rule optimization and adoption, allowing the expert to implement the gained knowledge in fault analysis. The fault types diagnosed here are: (1) a hydraulic oil leakage; (2) cooling system filter obstructions; (3) converter fan malfunctions; (4) anemometer offsets and (5) turbine controller malfunctions. Moreover, the graphical user interface (GUI) developed to access, analyze and visualize the data and results is presented.
机译:本文是两部分系列的第二部分。第一部分的独创性是提出了一种用于状态监测目的的用于风力涡轮机监控和数据采集(SCADA)数据挖掘的新颖方法的建议。这种新颖性涉及在这种情况下自适应神经模糊干扰系统(ANFIS)模型的使用以及所提出的程序在各种不同的SCADA信号中的应用。所建立的ANFIS模型用于异常检测的适用性已通过模型的性能证明。结合提出的模糊干扰系统(FIS),预测误差可提供有关受监视组件状况的信息。第二部分提供了应用实例,说明了所提出方法的效率。该工作基于连续测量的风力涡轮机SCADA数据,这些数据来自18台2兆瓦级现代变桨调节型风力涡轮机,历时35个月。通过状态监视系统(CMS)对这些数据中的几个实际故障和问题进行了分析和评估,并给出了结果。结果表明,SCADA数据包含了重要的信息,值得风力涡轮机运营商提取。使用全信号重建(FSRC)自适应神经模糊干扰系统(ANFIS)正常行为模型(NBM)结合模糊​​逻辑(FL),开发了用于此信息的数据挖掘的设置。可以实现高度自动化。结果表明,通过建议的CMS,可以将在一个汽轮机处建立的FL规则应用于故障自动诊断在其他汽轮机处的类似故障。本文的另一个重点在于规则优化和采用的过程,使专家可以在故障分析中实施所获得的知识。在此诊断出的故障类型为:(1)液压油泄漏; (2)冷却系统过滤网阻塞; (3)变流器风扇故障; (4)风速表偏移和(5)涡轮控制器故障。此外,还介绍了开发用于访问,分析和可视化数据和结果的图形用户界面(GUI)。

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