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Data dimension reduction and visualization with application to multidimensional gearbox diagnostics data: comparison of several methods

机译:数据降维和可视化及其在多维齿轮箱诊断数据中的应用:几种方法的比较

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In recent years we face the growing interest in building automated diagnosis systems detecting 'normal' or 'abnormal' functioning of a system. But little is known about the distribution of the data describing 'normal' functioning of a device. The geometrical shape of the gathered data -located in multivariate data space - is of paramount importance in determining a statistical model of the data, which might serve for the diagnosis. We got real industrial data by gathering vibration signals of a gearbox working in a mine excavator operating in time-varying conditions. The main considered problems are: what is the distribution of the recorded 15-dimensional data and what kind of outliers may be found in the recorded data. To answer these questions, we have used pseudo grand tour, principal component analysis and simple auto-associative neural network. The mentioned three methods proved to be very effective in answering our questions.
机译:近年来,我们对构建检测系统“正常”或“异常”功能的自动化诊断系统的兴趣日益浓厚。但是对于描述设备“正常”功能的数据分布知之甚少。位于多变量数据空间中的收集数据的几何形状对于确定数据的统计模型至关重要,这可能有助于诊断。通过收集在时变条件下运行的矿用挖掘机工作的变速箱的振动信号,我们获得了真实的工业数据。所考虑的主要问题是:记录的15维数据的分布是什么,以及在记录的数据中可能发现什么样的离群值。为了回答这些问题,我们使用了伪大导览,主成分分析和简单的自联想神经网络。上述三种方法在回答我们的问题方面非常有效。

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