首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Surface quality monitoring in abrasive water jet machining of Ti6Al4V-CFRP stacks through wavelet packet analysis of acoustic emission signals
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Surface quality monitoring in abrasive water jet machining of Ti6Al4V-CFRP stacks through wavelet packet analysis of acoustic emission signals

机译:通过声发射信号小波包分析,Ti6Al4V-CFRP堆栈磨料水喷射磨削的表面质量监测

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Machining such as trimming and drilling of aerospace composite structures is often required to meet the intended geometric tolerances and functional requirements. Abrasive water jet (AWJ) is a primary candidate for high speed machining of difficult-to-cut materials. The AWJ process performance is sensitive to the online faults and non-optimal process parameters, necessitating efficient techniques for online process control. In this study, acoustic emission (AE) signals are used to monitor AWJ machining of stacked titanium-CFRP. Owing to the non-stationary nature of the AE signals, this work is focused on the precision-driven predictive approach in simultaneous time-frequency domain. The AE signals were analyzed using wavelet packet transform (WPT), and an algorithm was proposed to identify and characterize these signals. Thirty-five different mother wavelets and decomposition levels up to 10 were used. The wavelet parameters (mother wavelet and decomposition) were deemed optimal when the identified signal characteristics could strongly correlate with the process parameters and kerf wall quality (surface roughness). Coiflets and Symlets were identified as the optimal wavelets with energy-entropy coefficient as the qualifying characteristic of the wavelet packet resulting in R-2 > 90%. A comparative study was conducted to qualify the proposed algorithm against standard time domain analysis measures. The maximum R-2 and CV (RMSD)-coefficient of variation of root mean square deviation for time domain was observed as 88.6% and 12.5% respectively as opposed to R-2 = 97.12% and CV (RMSD)= 6% for the proposed WPT algorithm. Overall, an efficient algorithm was proposed in monitoring the process quality and controlling the process parameters based on the identified signal signatures.
机译:诸如航空航天复合结构的修剪和钻井的加工通常需要满足预期的几何公差和功能要求。磨料水射流(AWJ)是用于难以切割材料的高速加工的主要候选者。 AWJ流程性能对在线故障和非最佳过程参数敏感,需要有效的在线过程控制技术。在该研究中,声发射(AE)信号用于监测堆叠钛-CFRP的AWJ加工。由于AE信号的非静止性,这项工作专注于同时时频域中的精密驱动的预测方法。使用小波分组变换(WPT)分析AE信号,并提出了一种算法来识别和表征这些信号。使用三十五个不同的母小波和分解水平,最高可达10。当所识别的信号特性与过程参数和Kerf壁质量(表面粗糙度)强烈地相关时,对小波参数(母小波和分解)被认为是最佳的。作为具有能量熵系数的热小波被识别为具有能量熵系数的最佳小波,作为小波包的鉴定特性,导致R-2> 90%。进行了比较研究以符合标准时域分析措施的提议算法。将时域的根部平均方形偏差的最大R-2和CV(RMSD)-Coferaid分别观察为88.6%和12.5%,而不是R-2 = 97.12%和CV(RMSD)= 6%提出了WPT算法。总的来说,提出了一种在监控过程质量并基于所识别的信号签名控制过程参数的有效算法。

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