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Wavelet transform feature extraction for chip form recognition during carbon steel turning

机译:碳钢转动过程中芯片形式识别的小波变换特征提取

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Cutting force sensor monitoring and wavelet decomposition signal processing were implemented for feature extraction and pattern recognition of chip form typology during turning of 1045 carbon steel. The wavelet packet transform was applied for the analysis of the detected cutting force signals by representing them in a time-frequency domain and providing for the extraction of wavelet packet statistical features. The latter were used to construct wavelet packet feature vectors, ranked according to the number of overlapping elements related to favourable or unfavourable chip forms that cause noise in the pattern recognition procedure (lower number, lower noise, higher rank). The eight highest ranked wavelet packet feature vectors were selected as inputs to a neural network decision-making system on chip form acceptability. Subsequently, a data refinement procedure was employed to improve the neural network performance in the chip form identification process.
机译:切割力传感器监测和小波分解信号处理用于在1045碳钢转动期间芯片形式类型的特征提取和图案识别。通过在时频域中表示它们来应用小波分组变换来分析检测到的切割力信号,并提供小波分组统计特征的提取。后者用于构建小波分组特征向量,根据与有利或不利的芯片形式相关的重叠元件的数量排序,这导致图案识别过程中的噪声(较低的数量,较低的噪声,更高等级)。将八个最高排名的小波分组特征向量选择为芯片形式可接受性上的神经网络决策系统的输入。随后,采用数据细化程序来改善芯片形式识别过程中的神经网络性能。

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