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首页> 外文期刊>International Journal of Precision Engineering and Manufacturing >Blind Signal Separation Method Based Machining Error Decomposition
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Blind Signal Separation Method Based Machining Error Decomposition

机译:基于盲信号分离方法的加工误差分解

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摘要

In view of the current error separation method cannot successfully separate the dissimilar systematic error components from the whole surface machining data, a method for machining errors decomposition based on blind signal separation is proposed which can distinguish those dissimilar systematic error components. Firstly, the error transfer model to describe the errors synthesizing from the single error component caused by corresponding individual error source to the synthesis machining surface error is conducted. To determine the number of the systematic error components, the principal component analysis (PCA) method is used. Then according to the theory of blind source separation, negative entropy based fixed point algorithm is proposed to fulfill the machining error components separation, which can realize the separation of the systematic error components even in close frequency scale. Finally, a shaft surface finish turning data and a flat surface milling data are used as examples to verify the proposed method. The result shows that the proposed error separation method can effectively realize the machining error separation in close frequency scale.
机译:鉴于当前的误差分离方法不能成功地将不同的系统误差分量与整个表面加工数据分开,提出了一种基于盲信号分离的加工误差分解的方法,这可以区分那些不同的系统误差分量。首先,进行错误传输模型,以描述由相应的单个误差源引起的单个误差分量合成的误差对合成加工表面误差。要确定系统错误组件的数量,使用主成分分析(PCA)方法。然后根据盲源分离理论,提出了基于负熵的固定点算法来满足加工误差分量分离,这可以实现系统误差分量的分离,即使在近频尺度上也可以分离系统误差分量。最后,使用轴表面光面转动数据和平面铣削数据作为示例以验证所提出的方法。结果表明,所提出的误差分离方法可以有效地实现紧密频率尺度的加工误差分离。

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