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Selective ensemble modeling load parameters of ball mill based on multi-scale frequency spectral features and sphere criterion

机译:基于多尺度频谱特征和球准则的球磨机选择性集成建模载荷参数

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摘要

It is difficult to model multi-frequency signal, such as mechanical vibration and acoustic signals of wet ball mill in the mineral grinding process. In this paper, these signals are decomposed into multi-scale intrinsic mode functions (IMFs) by the empirical mode decomposition (EMD) technique. A new adaptive multi-scale spectral features selection approach based on sphere criterion (SC) is applied to these IMFs frequency spectra. The candidate sub-models are constructed by the partial least squares (PLS) with the selected features. Finally, the branch and bound based selective ensemble (BBSEN) algorithm is applied to select and combine these ensemble sub-models. This method can be easily extended to regression and classification problems with multi-time scale signal. We successfully apply this approach to a laboratory-scale ball mill. The shell vibration and acoustic signals are used to model mill load parameters. The experimental results demonstrate that this novel approach is more effective than the other modeling methods based on multi-scale frequency spectral features.
机译:在矿物研磨过程中,很难模拟多频信号,例如湿式球磨机的机械振动和声信号。在本文中,这些信号通过经验模式分解(EMD)技术分解为多尺度本征模式函数(IMF)。一种新的基于球形准则(SC)的自适应多尺度光谱特征选择方法被应用于这些IMF频谱。候选子模型由具有所选特征的偏最小二乘(PLS)构成。最后,应用基于分支和边界的选择性集成算法(BBSEN)来选择和组合这些集成子模型。该方法可以很容易地扩展到多时间尺度信号的回归和分类问题。我们成功地将这种方法应用于实验室规模的球磨机。壳体的振动和声音信号用于模拟轧机负荷参数。实验结果表明,该新方法比基于多尺度频谱特征的其他建模方法更有效。

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