Condition Monitoring of Wind Turbines Based on the Scattering Transform of Vibration Data

Junyu Qi, Alexandre Mauricio, K. Gryllias
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Abstract

As a renewable, unlimited and free resource, wind energy has been intensively deployed in the past to generate electricity. However, the maintenance of Wind Turbines (WTs) can be challengeable. On the one hand, most wind farms operate in remote areas and on the other hand, the dimension of WTs’ tip/hub/rotor are usually enormous. In order to prevent abrupt breakdowns of WTs, a number of Condition Monitoring (CM) methods have been proposed. Focusing on bearing diagnostics, Squared Envelope Spectrum is one of the most common techniques. Moreover in order to identify the optimum demodulation frequency band, fast Kurtogram, Infogram and Sparsogram are nowadays popular tools evaluating respectively the Kurtosis, the Negentropy and the Sparsity. The analysis of WTs usually requires high effort due to the complexity of the drivetrain and the varying operating conditions and therefore there is still need for research on effective and reliable CM techniques for WT monitoring. Thus the purpose of this paper is to investigate a blind and effective CM approach based on the Scattering Transform. Through the comparison with state of the art techniques, the proposed methodology is found more powerful to detect a fault on six validated WT datasets.
基于振动数据散射变换的风力机状态监测
风能作为一种可再生的、无限的、免费的资源,过去一直被广泛利用来发电。然而,风力涡轮机(WTs)的维护是具有挑战性的。一方面,大多数风电场运行在偏远地区,另一方面,风力发电机的尖端/轮毂/转子尺寸通常很大。为了防止WTs的突然故障,人们提出了许多状态监测(CM)方法。在轴承诊断中,平方包络谱是最常用的技术之一。此外,为了确定最佳解调频带,快速峭度图、信息图和稀疏图是目前比较流行的评估峭度、负熵和稀疏度的工具。由于动力传动系统的复杂性和工况的变化,对小波变换的分析通常需要付出很大的努力,因此仍然需要研究有效可靠的小波变换监测CM技术。因此,本文的目的是研究一种基于散射变换的盲而有效的CM方法。通过与最新技术的比较,发现所提出的方法在六个经过验证的小波变换数据集上检测故障的能力更强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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