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Sound and vibration-based pattern recognition for wind turbines driving mechanisms

机译:风力发电机驱动机构基于声音和振动的模式识别

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This paper proposes a pattern recognition approach for a Fault Detection and Diagnosis (FDD) system based on the wavelet and the fast Fourier transform. Both techniques are developed in an experimental set that simulates the driving mechanisms housed in the nacelle of a wind turbine (WT) with results being validated in a real wind farm. After a first separate approach of the vibration harmonics and the sound energy, the root mean square error (RMSE) is used to fuse the data into a common pattern. The pattern reveals accurate information for unstable features (e.g. the case of the sound) related to mis-alignments among other failures. Comparing the experiments with the pattern, it is observed that the pattern is often close to the induced failures with minor exceptions. Relations among all the measured points are also found. The usefulness of the findings lies in the possibility of monitoring inaccessible devices considering this relation. Cost savings based on the strategic placement of the sensors can be intended too. The FDD will ensure the implementation of predictive actions before the occurrence of a catastrophic failure in an area where there is an ongoing challenge for being competitive. (C) 2017 Elsevier Ltd. All rights reserved.
机译:提出了一种基于小波和快速傅立叶变换的故障检测与诊断系统的模式识别方法。两种技术都是在一个实验装置中开发的,该装置模拟了安装在风力涡轮机(WT)机舱中的驱动机构,其结果在真实的风电场中得到了验证。在分别采用振动谐波和声能的第一种方法之后,使用均方根误差(RMSE)将数据融合到一个通用模式中。该模式可显示与其他故障中未对准相关的不稳定特征(例如声音的情况)的准确信息。将实验与模式进行比较,可以观察到模式通常接近诱发的故障,只有少数例外。还找到所有测量点之间的关系。研究结果的有用之处在于考虑到这种关系,可以监视无法访问的设备。也可以基于传感器的战略位置来节省成本。 FDD将确保在竞争不断面临挑战的地区发生灾难性故障之前,采取预防措施。 (C)2017 Elsevier Ltd.保留所有权利。

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