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首页> 外文期刊>Journal of marine science and technology >NOVEL FAULT DIAGNOSIS METHOD BASED ON CHAOS EYES AND EXTENSION NEURAL NETWORK FOR WIND POWER SYSTEMS
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NOVEL FAULT DIAGNOSIS METHOD BASED ON CHAOS EYES AND EXTENSION NEURAL NETWORK FOR WIND POWER SYSTEMS

机译:基于混沌眼和扩展神经网络的风电系统新型故障诊断方法

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摘要

This paper proposes a novel approach based on the chaos eye method (CEM) and extension neural network (ENN) for fault diagnosis of wind power systems. First, we used sensors to capture the vibration signals of the wind power system to detect subtle changes. Subsequently, the chaotic synchronization detection method was used to form a chaos error distribution diagram. The distribution diagram centroid, called chaos eye in this paper, was used as the fault diagnosis feature to reduce the number of extracted features. This reduction in diagnostic features enables considerably reducing the computation time and cost of hardware implementation. The ENN-based method was then used to design a fault diagnosis system for the tested wind power generation. The feasibility and practicability of the proposed method were validated using a simulation system. The patent for the proposed method is currently pending, and this method contributes to the key technologies of large-scale wind power generation systems in Taiwan.
机译:本文提出了一种基于混沌眼方法(CEM)和扩展神经网络(ENN)的风电系统故障诊断新方法。首先,我们使用传感器捕获风力发电系统的振动信号,以检测细微的变化。随后,使用混沌同步检测方法来形成混沌误差分布图。本文将分布图质心(称为混沌眼)用作故障诊断特征,以减少提取的特征数量。诊断功能的减少可大大减少计算时间和硬件实施成本。然后使用基于ENN的方法来设计用于测试的风力发电的故障诊断系统。仿真系统验证了该方法的可行性和实用性。该方法的专利目前正在申请中,该方法为台湾大型风力发电系统的关键技术做出了贡献。

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