Time-of-flight Extraction Method Based on Cross-correlation for Stress Measurement

Jianfei Yao, Yunxuan Gong, Yongzhi Liu, Zhili Long
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Abstract

The basic principle of ultrasonic-based absolute stress detection is to estimate the stress by detecting the propagation time of ultrasound in the medium. Because the change of wave speed caused by stress is very weak, how to obtain the propagation time of ultrasonic waves in the medium stably is the key problem. The commonly used time-of-flight (TOF) extraction methods include the peak value method or the threshold method, these methods are very sensitive to noise and waveform distortion in the signal, and have poor stability when the echo's signal-to-noise ratio (SNR) is low. Therefore, we adopt a TOF extraction method based on wavelet noise reduction algorithm and cross-correlation method. The SNR of the echo is improved by wavelet noise reduction, and the TOF is obtained by the cross-correlation method. Moreover, the acquisition mode of one transmitter and two receivers is adopted to solve the reference signal consistency problem in the cross-correlation method. The experimental results show that compared with the peak value method, the cross-correlation method improves the accuracy and stability of TOF extraction.
基于互相关的应力测量飞行时间提取方法
基于超声的绝对应力检测的基本原理是通过检测超声在介质中的传播时间来估计应力。由于应力引起的波速变化非常微弱,因此如何稳定地获得超声波在介质中的传播时间是关键问题。常用的飞行时间(TOF)提取方法有峰值法和阈值法,这些方法对信号中的噪声和波形畸变非常敏感,在回波信噪比较低时稳定性较差。因此,我们采用了一种基于小波降噪算法和互相关法的TOF提取方法。采用小波降噪的方法提高回波信噪比,并采用互相关法获得TOF。此外,为了解决互相关方法中参考信号的一致性问题,采用了一发二收的采集方式。实验结果表明,与峰值法相比,互相关法提高了TOF提取的准确性和稳定性。
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