Tóth László Z, Daróczi Lajos, Elrasasi Tarek Y, Beke Dezső L
Department of Solid State Physics, University of Debrecen, P.O. Box 400, H-4002 Debrecen, Hungary.
Department of Physics, Faculty of Science, Benha University, Benha 13518, Egypt.
Materials (Basel). 2022 Sep 27;15(19):6696. doi: 10.3390/ma15196696.
Results of acoustic emission (AE) measurements, carried out during plastic deformation of polycrystalline Sn samples, are analyzed by the adaptive sequential k-means method. The acoustic avalanches, originating from different sources, are separated on the basis of their spectral properties, that is, sorted into clusters, presented both on the so-called feature space (energy-median frequency plot) and on the power spectral density (PSD) curves. We found that one cluster in every measurement belongs to background vibrations, while the remaining ones are clearly attributed to twinning as well as dislocation slips at −30 °C and 25 °C, respectively. Interestingly, fingerprints of the well-known “ringing” of AE signals are present in different weights on the PSD curves. The energy and size distributions of the avalanches, corresponding to twinning and dislocation slips, show a bit different power-law exponents from those obtained earlier by fitting all AE signals without cluster separation. The maximum-likelihood estimation of the avalanche energy (ε) and size (τ) exponents provide ε=1.57±0.05 (at −30 °C) and ε=1.35±0.1 (at 25 °C), as well as τ=1.92±0.05 (at −30 °C) and τ= 1.55±0.1 (at 25 °C). The clustering analysis provides not only a manner to eliminate the background noise, but the characteristic avalanche shapes are also different for the two mechanisms, as it is visible on the PSD curves. Thus, we have illustrated that this clustering analysis is very useful in discriminating between different AE sources and can provide more realistic estimates, for example, for the characteristic exponents as compared to the classical hit-based approach where the exponents reflect an average value, containing hits from the low-frequency mechanical vibrations of the test machine, too.
通过自适应顺序k均值方法分析了多晶锡样品塑性变形过程中进行的声发射(AE)测量结果。源自不同源的声雪崩根据其频谱特性进行分离,即在所谓的特征空间(能量-中值频率图)和功率谱密度(PSD)曲线上分类成簇。我们发现每次测量中的一个簇属于背景振动,而其余的簇分别明显归因于-30°C和25°C时的孪晶以及位错滑移。有趣的是,AE信号的著名“振铃”指纹在PSD曲线上以不同权重出现。与孪晶和位错滑移对应的雪崩的能量和尺寸分布显示出与早期通过拟合所有未进行簇分离的AE信号所获得的幂律指数略有不同。雪崩能量(ε)和尺寸(τ)指数的最大似然估计提供了ε = 1.57±0.05(在-30°C时)和ε = 1.35±0.1(在25°C时),以及τ = 1.92±0.05(在-30°C时)和τ = 1.55±0.1(在25°C时)。聚类分析不仅提供了一种消除背景噪声的方法,而且两种机制的特征雪崩形状也不同,这在PSD曲线上是可见的。因此,我们已经表明这种聚类分析在区分不同的AE源方面非常有用,并且可以提供更现实的估计,例如,与经典的基于命中的方法相比,经典方法中的指数反映平均值,其中也包含来自测试机器低频机械振动的命中。