Accelerated algorithm for BTT identification parameter with GMC sparse regularization

Yuda Zhu, Baijie Qiao, Yanan Wang, Bo Pan, Lin Chen, Xuefeng Chen
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引用次数: 1

Abstract

Accurate identification of vibration parameters from blade tip timing (BTT) undersampled signals is essential for rotating blade vibration monitoring. However, the traditional parameter identification method of BTT signal depends on the prior. The existing sparse regularization method underestimates the reconstructed signal amplitude and has low computational efficiency. This paper resorts to an accelerated algorithm for BTT identification parameters based on generalized minimax-concave (GMC) sparse regularization to accurately and quickly identify amplitude and frequency parameters from undersampled signals. For amplitude underestimation, the non-convex GMC penalty is introduced so that the sparsity of the estimation is improved, and the convexity of the cost function is preserved. Moreover, Nesterov's accelerated iterative computation strategy is resorted to rapidly improving the convergence performance of obtaining the global optimum. The simulation results show that by reconstructing the BTT signal, the presented parameter identification algorithm based on accelerated generalized minimax-concave (AGMC) improves the computational rate with the inherited merits of accuracy.
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基于GMC稀疏正则化的BTT参数识别加速算法
从叶尖定时欠采样信号中准确识别振动参数对叶片振动监测至关重要。然而,传统的BTT信号参数辨识方法依赖于先验。现有的稀疏正则化方法低估了重构信号的幅值,计算效率较低。本文采用基于广义极小极大凹(GMC)稀疏正则化的BTT识别参数加速算法,从欠采样信号中准确快速地识别振幅和频率参数。对于幅度估计不足,引入非凸GMC惩罚,提高了估计的稀疏性,同时保持了代价函数的凸性。采用Nesterov加速迭代计算策略,快速提高全局最优解的收敛性能。仿真结果表明,基于加速广义极小极大凹(AGMC)的参数识别算法通过对BTT信号进行重构,在继承精度优点的同时提高了计算率。
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