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Bayesian waveform-based calibration of high-pressure acoustic emission systems with ball drop measurements

机译:基于贝叶斯波形的高压声发射系统校准,具有球滴测量

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Acoustic emission (AE) is a widely used technology to study source mechanisms and material properties during high-pressure rock failure experiments. It is important to understand the physical quantities that acoustic emission sensors measure, as well as the response of these sensors as a function of frequency. This study calibrates the newly built AE system in the MIT Rock Physics Laboratory using a ball-bouncing system. Full waveforms of multibounce events due to ball drops are used to infer the transfer function of lead zirconate titanate (PZT) sensors in high pressure environments. Uncertainty in the sensor transfer functions is quantified using a waveform-based Bayesian approach. The quantification of in situ sensor transfer functions makes it possible to apply full waveform analysis for acoustic emissions at high pressures.
机译:声发射(AE)是一种广泛使用的技术,用于研究高压岩体失效实验期间的源机构和材料特性。 重要的是要理解声发射传感器测量的物理量以及这些传感器作为频率函数的响应。 本研究使用球弹跳系统校准了MIT岩石物理实验室的新建AE系统。 由于滚珠滴引起的多跳法事件的全波形用于推断在高压环境中引线锆钛(PZT)传感器的转移功能。 使用基于波形的贝叶斯方法量化传感器传递函数的不确定性。 原位传感器传递函数的量化使得可以在高压下对声发射进行全波形分析。

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