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Novel paralleled extreme learning machine networks for fault diagnosis of wind turbine drivetrain

机译:用于风力涡轮机传动系统的故障诊断的新型并联极端学习机网络

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摘要

With the increasing installed power of the wind turbines, the necessity of condition monitoring for wind turbine drivetrain cannot be neglected any longer. A reliable and rapid response fault diagnosis is vital for the wind turbine drivetrain system. The existing manual inspection-based methods are difficult to accomplish the real-time compound-fault monitoring task. To solve this problem, this paper proposes a novel dual extreme learning machines (Dual-ELMs) based fault diagnostic framework for feature extraction and fault pattern recognition. At the stage of feature learning, this paper applies the local mean decomposition (LMD) method to extract the production functions from the raw vibration signals. Compared with the traditional empirical mode decomposition method, the LMD method has a stronger ability to restrain the mode mixing and endpoints effect. At the stage of compound-fault classification, unlike the other widely-used classifiers, the proposed Dual-ELM networks inherit the advantages of the original extreme learning machines (ELMs), that employs two basic ELM networks for the compound-fault classification, and it does not need iterative fine-tuning of parameters. Thus the learning speed is faster than the other combinations of classifiers. The experimental validity of the proposed algorithm was conducted on a test rig for vibration analysis, which demonstrated that the proposed Dual-ELMs based fault diagnostic method provides an effective measure for the observed machinery than the other available fault diagnostic methods in aspects of feature extraction and compound-fault recognition.
机译:随着风力涡轮机的越来越多的电力,不再忽略风力涡轮机传动系统的状态监测的必要性。可靠且快速的响应故障诊断对于风力涡轮机传动系统来说至关重要。基于手动检查的方法难以实现实时复合故障监控任务。为了解决这个问题,本文提出了一种新的双极限学习机(双ELMS)的特征提取和故障模式识别的故障诊断框架。在特征学习阶段,本文适用于本地平均分解(LMD)方法从原始振动信号提取生产功能。与传统的经验模式分解方法相比,LMD方法具有更强的抑制模式混合和终点效果的能力。在复合故障分类的阶段,与其他广泛使用的分类器不同,所提出的双ELM网络继承了原始的极端学习机(ELM)的优势,为复合故障分类采用了两个基本的ELM网络,以及它不需要参数的迭代微调。因此,学习速度比分类器的其他组合更快。所提出的算法的实验有效性在试验台上进行了振动分析,这证明了所提出的双埃尔姆斯的故障诊断方法为观察机械提供了比特征提取的各方面的其他可用故障诊断方法的有效措施。复合故障识别。

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