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Sparse reconstruction for blade tip timing signal using generalized minimax-concave penalty

机译:叶片尖端定时信号稀疏重建使用广义最低限度凹陷

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摘要

Rotor blade health monitoring based on the non-contact blade tip timing (BTT) technique has already been proved to be an alternative method to the classical contact strain measurement method. However, the signal sampled by the BTT system is usually undersam-pled due to the limited BTT sensors. Sparse regularization in the framework of li-norm has been introduced to identify the blade vibration parameter from the undersampled BTT data. However, the standard sparse regularization based on ℓ_1-norm penalty generally generates an underestimated solution. Compared with ℓ_1-norm penalty, generalized minimax-concave (GMC) penalty as a non-convex penalty has the promising property of amplitude improvement. In this paper, a non-convex optimization model based on GMC penalty is developed for reconstructing the undersampled BTT signal to obtain the accurate blade-tip displacement and blade natural frequency. The optimization model based on GMC penalty is presented to find the global optimal solution for the sparse representation of the BTT signal even if GMC penalty turns out to be a non-convex regularizer. Additionally, the strategy of regularization parameter selection is provided through the blade tip timing simulator. The relationship between the noise level and the regularization parameter is established to provide the strategy of regularization parameter selection in experiment. Finally, the blade spin testing is carried out for measuring the blade vibration by BTT and strain gauge systems. Amplitudes and frequencies of reconstructed BTT signals are compared with the measurements of the strain gauge, which are transferred from the strain at the blade root to the displacement at the blade tip by using the conversion coefficient obtained from the finite element model. Both simulation and experiment demonstrate that compared with the ℓ_1 -norm penalty, GMC penalty can reconstruct the blade-tip displacement and blade natural frequency with high accuracy.
机译:基于非接触式尖端定时(BTT)技术的转子叶片健康监测已经被证明是经典接触应变测量方法的替代方法。然而,由于BTT传感器有限,BTT系统采样的信号通常是UnteSam-Pled。引入了LI-NORM框架中的稀疏正则化以从未采样的BTT数据识别刀片振动参数。但是,基于ℓ_1-nar-norm惩罚的标准稀疏正则化通常会产生低估的解决方案。与χ_1-NOM罚款相比,作为非凸罚的广义最低少数(GMC)惩罚具有幅度改善的有希望的性质。在本文中,开发了一种基于GMC惩罚的非凸优化模型,用于重建未采样的BTT信号以获得精确的刀片尖端位移和叶片自然频率。提出了基于GMC惩罚的优化模型,以查找BTT信号的稀疏表示的全局最优解决方案,即使GMC罚款变为非凸编程器。另外,通过刀片尖端定时模拟器提供正则化参数选择策略。建立噪声水平与正则化参数之间的关系,以提供实验中的正则化参数选择策略。最后,进行刀片自旋测试,用于测量BTT和应变计系统的叶片振动。将重建的BTT信号的幅度和频率与应变计的测量进行比较,这些测量值通过使用从有限元模型获得的转换系数从叶片根部的菌株传递到叶片尖端的位移。仿真和实验均表明,与ℓ_1-or anorc处罚相比,GMC罚款可以重建刀片尖端位移和刀片自然频率,高精度。

著录项

  • 来源
    《Mechanical systems and signal processing》 |2021年第12期|107961.1-107961.18|共18页
  • 作者单位

    The State Key Laboratory for Manufacturing Systems Engineering Xi'an 710061 PR China School of Mechanical Engineering Xi'an Jiaotong University Xi'an 710049 PR China;

    The State Key Laboratory for Manufacturing Systems Engineering Xi'an 710061 PR China School of Mechanical Engineering Xi'an Jiaotong University Xi'an 710049 PR China;

    The State Key Laboratory for Manufacturing Systems Engineering Xi'an 710061 PR China School of Mechanical Engineering Xi'an Jiaotong University Xi'an 710049 PR China;

    The State Key Laboratory for Manufacturing Systems Engineering Xi'an 710061 PR China School of Mechanical Engineering Xi'an Jiaotong University Xi'an 710049 PR China;

    AECC Sichuan Gas Turbine Establishment Chengdu 610500 PR China;

    The State Key Laboratory for Manufacturing Systems Engineering Xi'an 710061 PR China School of Mechanical Engineering Xi'an Jiaotong University Xi'an 710049 PR China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Blade tip timing; Sparse reconstruction; Generalized minimax-concave penalty; Undersampled sign;

    机译:刀片尖端时间;稀疏的重建;广义最低少的惩罚;缺乏采样的标志;

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