On Data Preprocessing for an Improved Performance of the Sources Classification

B. Dumitrascu, D. Aiordachioaie
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引用次数: 1

Abstract

Data preprocessing is emphasized, as a major step to generate features for data analysis and classification. Data preprocessing is on the feedback loop of data analysis and is driven by experimented users with valuable software tools. In this work, data preprocessing is extended with decorrelation capacity, based on matched data transforms, e.g., discrete cosine transforms. The context is fixed by the availability of power spectra, as input to the classification stage. The preprocessing structure is evaluated with physical recorded signals, representing vibrations generated by faults in the bearings of rotating machines. The structure of the preprocessing is general and can be applied in many other paradigms as machine learning, for the generation of the training sets with independent features.
提高源分类性能的数据预处理研究
强调数据预处理,作为生成数据分析和分类特征的重要步骤。数据预处理是在数据分析的反馈回路上,由实验用户使用有价值的软件工具驱动。在这项工作中,基于匹配的数据变换,例如离散余弦变换,扩展了数据预处理的去相关能力。上下文由功率谱的可用性确定,作为分类阶段的输入。预处理结构是用物理记录的信号来评估的,这些信号代表了旋转机器轴承故障产生的振动。预处理的结构是通用的,可以应用于许多其他范例,如机器学习,用于生成具有独立特征的训练集。
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