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Traceability of acoustic emission measurements for micro and macro grinding phenomena-characteristics and identification through classification of micro mechanics with regression to burn using signal analysis

机译:微观和宏观磨削现象的声发射测量的可追踪性-特征,通过对微观力学进行分类并通过信号分析回归燃烧来识别

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摘要

During the unit event of material interaction in grinding, three phenomena are involved, namely, rubbing, ploughing and cutting, where ploughing and rubbing essentially mean the energy is being applied less efficiently in terms of material removal. Such phenomenon usually occurs before or after cutting. Based on this distinction, it is important to identify the effects of these different phenomena experienced during grinding. Acoustic emission (AE) of the material grit interaction is considered as the most sensitive monitoring process to investigate such miniscule material interactions. For this reason, two AE sensors were used to pick up energy signatures (one verifying the other) correlated to material measurements of the horizontal scratch groove profiles. Such material measurements would display both the material plastic deformation and material removal mechanisms. Previous work has only partially displayed the link in terms of micro and macro phenomena (unit event to normal MG events). In the work presented here, the micro unit grit event will be linked to the macro phenomena such as normal grinding conditions extended to aggressive conditions-burn. This is significant to any safety critical manufacturing environment due to the fact that burn provides surfaces that cannot be accepted when scrutinised under quality considerations and therefore plays an integral part into abrasive machining process. This paper also looks at transparent classification (CART) to give regression capabilities in displaying the micro to macro phenomena in terms of signal intensities and frequency representation. The demarcation between each of the phenomena was identified from acoustic emission signals being converted to the frequency-time domains using short-time Fourier transforms.
机译:在磨削中材料相互作用的单位事件中,涉及到三种现象,即摩擦,犁削和切割,其中犁削和摩擦实质上意味着就材料去除而言,能量的利用效率较低。这种现象通常发生在切割之前或之后。基于此区别,重要的是要确定磨削过程中遇到的这些不同现象的影响。材料砂粒相互作用的声发射(AE)被认为是研究此类微小材料相互作用的最灵敏的监测过程。因此,使用了两个AE传感器来拾取与水平划痕凹槽轮廓的材料测量相关的能量特征(一个用于验证另一个)。这种材料测量将显示材料塑性变形和材料去除机制。以前的工作仅部分显示了微观和宏观现象(单位事件与正常MG事件)之间的联系。在本文介绍的工作中,微细砂粒事件将与宏观现象相关,例如正常磨削条件扩展到侵蚀性条件燃烧。这对任何安全性至关重要的生产环境都具有重要意义,因为这样的事实,即烧伤提供的表面在质量考虑下无法接受,因此在研磨加工过程中起着不可或缺的作用。本文还着眼于透明分类(CART),以提供从信号强度和频率表示角度显示微观到宏观现象的回归能力。通过使用短时傅立叶变换将声发射信号转换为频域,可以识别每种现象之间的界限。

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