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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Feature learning method of acoustic emission signal during single-grit scratching on BK7 in brittle regime
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Feature learning method of acoustic emission signal during single-grit scratching on BK7 in brittle regime

机译:BK7在脆性方案中的单臂刮擦时声发射信号的特征学习方法

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Acoustic emission (AE) signal is released from a material as it undergoes deformation and fracture processes. AE signal provides enough information for monitoring of the interaction between tool and material. AE RMS, AE count rates, and frequency characteristics are always employed in AE-based monitoring techniques. Monitoring sensitivity is not satisfied because information implies in AE signal is lost or weaken to some extent for the present monitoring parameters. When a hard-brittle material is removed in brittle regime, burst-type AE (b-AE) associated with crack and chip is predominant compared with low-amplitude continuous-type AE. It will be more objective and physically meaningful if b-AE event is taken as a unit to be monitored. This paper is dedicated to the method of monitoring b-AE event in AE signal. Ignoring background noise, an AE signal can be looked as a convolution of b-AE events and corresponding coefficients. b-AE events correspond to brittle transient behaviors and include information of fracture mechanism. Coefficients represent intensity and location of crack and chip during removal processes. The two elements of the convolution contain different aspects of signal feature. Considering randomness of AE signals, the convolution form will be realized by self-learning from training data set of AE signals. Dictionary-learning algorithm for decaying oscillation modes of b-AE and sparse representation procedure of an AE signal are detailed in this paper based on the convex optimization theory. AE signals in brittle regime are acquired from tests of single diamond grit scratching on BK7. Simulation and experimental results verify the correctness of the feature learning method. According to the method proposed in this paper, b-AE can be objectively monitored without the interference of varying machining parameters.
机译:声发射(AE)信号从材料中释放出变形和断裂过程。 AE信号提供足够的信息,用于监视工具和材料之间的相互作用。 AE RMS,AE计数和频率特性始终采用基于AE的监控技术。监测灵敏度不满足,因为信息在AE信号中暗示在某种程度上丢失或削弱到目前的监视参数。当在脆性方案中除去硬脆性材料时,与裂纹和芯片相关的突发型AE(B-AE)与低幅度连续型AE相比是主要的。如果B-AE事件被视为要监控的单位,则将更客观和物理有意义。本文专用于监控AE信号中的B-AE事件的方法。忽略背景噪声,可以查看AE信号作为B-AE事件和相应系数的卷积。 B-AE事件对应于脆弱瞬态行为,包括骨折机制的信息。系数表示去除过程中裂缝和芯片的强度和位置。卷积的两个元素包含信号特征的不同方面。考虑到AE信号的随机性,将通过从AE信号的训练数据集进行自学来实现卷积形式。本文基于凸优化理论,详细介绍了B-AE衰减振荡模式和AE信号的稀疏振荡模式的字典 - 文学 - AE信号。从BK7上划伤的单金刚石砂砾的测试获得了脆性制度的AE信号。仿真和实验结果验证了特征学习方法的正确性。根据本文提出的方法,可以客观地监测B-AE,而不会干扰变化的加工参数。

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