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Operating characteristic information extraction of flood discharge structure based on complete ensemble empirical mode decomposition with adaptive noise and permutation entropy

机译:基于完整集合经验模型分解的基于完整噪声和排列熵的洪水放电结构的操作特征信息提取

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摘要

It remains a major issue to assess health condition and degree of vibration damage of flood discharge structure by working features in recent years. In the process of acquisition and transmission, because vibration signals are susceptible to interference from high-frequency white noise and low-frequency water flow noise, they are usually shown in the form of nonstationary random signals with low signal to noise ratio. Modal information is hard to be precisely recognized as the character of structural vibration is drowned into the strong noise. In order to remove the noise and preserve structural characteristic information, a new characteristic information extraction method based on complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) entropy (CEEMDAN-PE) is proposed. Firstly, the vibration signal is decomposed into a series of intrinsic mode functions (IMFs) by CEEMDAN, and then low-frequency water flow noise can be filtered out through spectrum analysis of each IMF component. Secondly, the noise degree of each IMF is determined by permutation entropy and high-frequency noise in IMFs is filtered out by singular value decomposition. Finally, the noise elimination IMFs are reconstructed to obtain the operating characteristic information of flood discharge structure. The effectiveness of the proposed method on characteristic information extraction is validated by a simulation experiment. Furthermore, the proposed method was applied to the 5th overflow section of Three Gorges Dam and the analysis results show that the CEEMDAN-PE method can effectively remove the noise and extract dominant frequencies of flood discharge structure, which provides foundation for health monitoring and damage identification of flood discharge structure with a strong engineering practicability.
机译:近年来通过工作特征评估洪水放电结构的健康状况和振动损伤程度仍然是一个重要问题。在获取和传输的过程中,因为振动信号易受来自高频白噪声和低频水流噪声的干扰,所以它们通常以低信噪比的非间断随机信号的形式示出。模态信息很难被精确地被认为是结构振动的特征淹没到强烈的噪音。为了除去噪声并保持结构特征信息,提出了一种基于完整集合经验模式分解的新特征信息提取方法,具有自适应噪声(CeeMDAN)熵(CeeMDAN-PE)。首先,振动信号通过CeeMDAN分解成一系列内在模式功能(IMF),然后可以通过每个IMF组件的频谱分析来滤除低频水流噪声。其次,通过奇异值分解通过置换熵确定每个IMF的噪声度,并且通过奇异值分解滤除IMF中的高频噪声。最后,重建噪声消除IMF以获得泄漏结构的操作特性信息。通过模拟实验验证了所提出的方法对特征信息提取的有效性。此外,将所提出的方法应用于三峡大坝的第五溢出部分,分析结果表明,CeeMDAN-PE方法可以有效地消除漏洞的噪声和提取洪水排放结构的主力频率,为健康监测和损害识别提供基础洪水排放结构具有强大的工程实用性。

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