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Identification of Tool Wear Condition Based on Generalized Fractal Dimensions and BP Neural Network Optimized with Genetic Algorithm

机译:基于广义分形尺寸和遗传算法优化的刀具磨损条件的识别

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Based on multi-fractal theory, the generalized fractal dimensions of acoustic emission (AE) signals during cutting process were calculated using improved box-counting method. The generalized dimension spectrums of AE signals for different tool wear condition were gained, and the relation between tool wear condition and generalized dimensions was analyzed. Together with cutting process parameters, the generalized fractal dimensions were taken as the input vectors of BP neural network after normalization. The initial weight and bias values of BP neural network which was used to classify the tool wear condition were optimized with Genetic Algorithm. The test results showed that the method can be used effectively for the identification of tool wear condition.
机译:基于多分形理论,使用改进的箱计数方法计算了切割过程中的声发射(AE)信号的广义分形尺寸。获得了不同工具磨损条件的AE信号的广义尺寸谱,分析了工具磨损条件与广义尺寸之间的关系。与切割工艺参数一起,广义分形尺寸被视为标准化后BP神经网络的输入向量。用遗传算法优化了用于分类工具磨损条件的BP神经网络的初始重量和偏置值。测试结果表明,该方法可有效地用于识别工具磨损条件。

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