A high‐accuracy and robust diagnostic tool for gearbox faults in wind turbines

Shiue‐Der Lu, Yi‐Hsuan Jiang, Chia‐Chun Wu, Hong-Wei Sian
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Abstract

Faulty gears are a common cause of wind turbine failures. For this sake, this work was developed as a reliable diagnostic tool for wind turbines to improve wind power stability accordingly. A convolutional extension neural network (CENN) was proposed to identify vibration and audio signals captured from a gearbox. According to the status of the contained faulty gears, a gearbox was categorised as one of the three types: (i) broken, (ii) rusty and (iii) a combination of (i) and (ii). It was further assigned one of the three severity levels: mild, moderate and severe. Therefore, there were a total of nine combinations for identification. Captured raw vibration and audio signals were applied to a chaotic synchronisation detector by which 3D chaotic error scatter feature images were generated to train and test the CENN. The recognition rate provided by CENN and the majority rule reached 99.6%, and then slightly fell to 97.4% in a noise robustness test, and consequently CENN outperformed counterparts in terms of the recognition rate and the robustness against noise. Accordingly, multiple gearbox faults can be well diagnosed for the first time in the literature. Finally, this paper concludes with a simplified version of the original proposal.
风力涡轮机齿轮箱故障的高精度稳健诊断工具
齿轮故障是风力涡轮机故障的常见原因。因此,本研究开发了一种可靠的风力涡轮机诊断工具,以提高风力发电的稳定性。我们提出了一种卷积扩展神经网络 (CENN),用于识别从齿轮箱采集到的振动和音频信号。根据所含故障齿轮的状态,齿轮箱被分为三种类型:(i) 损坏、(ii) 生锈和 (iii) (i) 和 (ii) 的组合。齿轮箱的严重程度分为轻度、中度和重度三种。因此,共有九种识别组合。捕获的原始振动和音频信号应用于混沌同步检测器,通过该检测器生成三维混沌误差散射特征图像,用于训练和测试 CENN。CENN 和多数规则的识别率达到 99.6%,在噪声鲁棒性测试中略微下降到 97.4%,因此 CENN 在识别率和噪声鲁棒性方面优于同行。因此,在文献中首次可以很好地诊断多种齿轮箱故障。最后,本文以原始提案的简化版本作为结束语。
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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