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Sparse representation and its applications in micro-milling condition monitoring: noise separation and tool condition monitoring

机译:稀疏表示及其在微铣削状态监测中的应用:噪声分离和刀具状态监测

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摘要

This paper presents a new approach for cutting force denoising in micro-milling condition monitoring. In micro-milling, the comparatively small cutting force signal is contaminated by heavy noise, and as a result, it is necessary to denoise the force signal before further processing it. The traditional denoising methods, based on Gaussian noise assumption, are not effective in this situation because the noise is found to contain high non-Gaussian component. Based on the force and noise's sparse structures in the time-frequency domain, this approach employs a sparse decomposition approach and solves denoising as a convex optimization problem. It is shown that the proposed approach can separate the heavy non-Gaussian noise and recover useful information for condition monitoring.
机译:本文提出了一种在微铣削状态监测中用于切削力降噪的新方法。在微铣削中,相对较小的切削力信号会受到重噪声的污染,因此,有必要在进一步处理之前将其去噪。基于高斯噪声假设的传统降噪方法在这种情况下无效,因为发现噪声包含高非高斯分量。基于时频域中力和噪声的稀疏结构,该方法采用稀疏分解方法,并解决了作为凸优化问题的降噪问题。结果表明,所提出的方法可以分离出非高斯噪声,并回收有用的信息进行状态监测。

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