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A CAPSNET-BASED FAULT DIAGNOSIS METHOD FOR A DIGITAL TWIN OF A WIND TURBINE GEARBOX

机译:一种基于CAPSNET的风力涡轮机齿轮箱数码双床故障诊断方法

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Accurate fault diagnosis of complex energy systems, such as wind turbines, is essential to avoid catastrophic accidents and ensure a stable power source. However, accurate fault diagnoses under dynamic operating conditions and various failure mechanisms are major challenges for wind turbines nowadays. Here we present a CapsNet-based deep learning scheme for data-driven fault diagnosis used in a digital twin of a wind turbine gearbox. The CapsNet model can extract the multi-dimensional features and rich spatial information from the gearbox monitoring data by an artificial neural network named the CapsNet. Through the dynamic routing algorithm between capsules, the network structure and parameters of the CapsNet model can be adjusted effectively to realize an accurate and robust classification of the operational conditions of a wind turbine gearbox, including front box stuck (single fault) and high-speed shaft bearing damage & planetary gear damage (coupling faults). Two gearbox datasets are used to verify the performance of the CapsNet model. The experimental results show that the accuracy of this proposed method is up to 98%, which proves the accuracy of CapsNet model in the case study when this model performed three-state classification (health, stuck, and coupled damage). Compared with state-of-the-art fault diagnosis methods reported in the literature, the CapsNet model has a competitive advantage, especially in the ability to diagnose coupling faults, high-speed shaft bearing damage & planetary gear damage in our case study. CapsNet has at least 2.4 percentage points higher than any other measure in our experiment. In addition, the proposed method can automatically extract features from the original monitoring data, and do not rely on expert experience or signal processing related knowledge, which provides a new avenue for constructing an accurate and efficient digital twin of wind turbine gearboxes.
机译:准确的故障诊断复杂能量系统,如风力涡轮机,是避免灾难性事故并确保稳定的电源。然而,在动态运行条件下准确的故障诊断以及各种故障机制现在是风力涡轮机的主要挑战。在这里,我们提出了一种基于帽的深度学习方案,用于在风力涡轮机齿轮箱的数字双胞胎中使用的数据驱动故障诊断。 CAPSNet模型可以通过名为CapsNet的人工神经网络从变速箱监控数据中提取多维特征和丰富的空间信息。通过胶囊之间的动态路由算法,可以有效地调整载波型号的网络结构和参数,以实现风力涡轮机齿轮箱的操作条件的准确且坚固的分类,包括前箱卡(单个故障)和高速轴承造型损坏和行星齿轮损坏(联轴器断层)。两个齿轮箱数据集用于验证载波模型的性能。实验结果表明,这种方法的准确性高达98%,这证明了在该模型进行三州分类(健康,卡住和耦合损坏)时在案例研究中证明了Capsnet模型的准确性。与文献中报告的最先进的故障诊断方法相比,帽模型具有竞争优势,特别是在案例研究中诊断耦合断层,高速轴轴承损坏和行星齿轮损坏的能力。 Capsnet比我们实验中的任何其他措施高至少2.4个百分点。此外,所提出的方法可以自动提取原始监测数据的特征,并不依赖于专家体验或信号处理相关知识,这为构建精确高效的风力涡轮机齿轮箱提供了新的途径。

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