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Residual stress assessment in Inconel 718 machining through wavelet sensor signal analysis and sensor fusion pattern recognition

机译:通过小波传感器信号分析和传感器融合模式识别的inconel 718加工中的残余应力评估

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On-line residual stress assessment in turning of Inconel 718 was carried out through multiple sensor monitoring based on cutting force, acoustic emission and vibration signals acquisition and analysis. The detected sensor signals were processed by the wavelet packet transform technique to extract statistical features from the packet coefficients for the construction of wavelet feature vectors. The latter were used for sensor fusion pattern recognition through neural network data processing grounded on X-ray diffraction residual stress measurements on the turned part surface. The scope of the sensory data fusion approach was to achieve a robust scheme for multi-sensor monitoring decision making on machined surface integrity in terms of residual stress level acceptability.
机译:通过基于切割力,声发射和振动信号采集和分析,通过多传感器监测进行Inconel 718轮转718的在线残余应力评估。通过小波分组变换技术处理检测到的传感器信号,以从分组系数中提取统计特征以进行小波特征向量的构造。后者通过基于转动部分表面上的X射线衍射残余应力测量接地的神经网络数据处理来用于传感器融合模式识别。感官数据融合方法的范围是在残余应力水平可接受性方面实现了对机加工表面完整性的多传感器监测决策的鲁棒方案。

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