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Study on Mutual Information and Fractal Dimension-Based Unsupervised Feature Parameters Selection: Application in UAVs

机译:基于互信息和基于分形维度的无核特征参数选择的研究:在无人机中的应用

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摘要

In this study, due to the redundant and irrelevant features contained in the multi-dimensional feature parameter set, the information fusion performance of the subspace learning algorithm was reduced. To solve the above problem, a mutual information (MI) and fractal dimension-based unsupervised feature parameters selection method was proposed. The key to this method was the importance ordering algorithm based on the comprehensive consideration of the relevance and redundancy of features, and then the method of fractal dimension-based feature parameter subset evaluation criterion was adopted to obtain the optimal feature parameter subset. To verify the validity of the proposed method, a brushless direct current (DC) motor performance degradation test was designed. Vibrational sample data during motor performance degradation was used as the data source, and motor health-fault diagnosis capacity and motor state prediction effect ware evaluation indexes to compare the information fusion performance of the subspace learning algorithm before and after the use of the proposed method. According to the comparison result, the proposed method is able to eliminate highly-redundant parameters that are less correlated to feature parameters, thereby enhancing the information fusion performance of the subspace learning algorithm.
机译:在本研究中,由于多维特征参数集中包含的冗余和无关的特征,子空间学习算法的信息融合性能减少。为了解决上述问题,提出了一种相互信息(MI)和基于分形维度的无监督的特征参数选择方法。该方法的关键是基于全面考虑特征相关性和冗余的重要性排序算法,然后采用了基于分形维度的特征参数子集评估标准的方法来获得最佳特征参数子集。为了验证所提出的方法的有效性,设计了无刷直流(DC)电机性能降级测试。电动机性能下降期间的振动样本数据用作数据源,电机健康故障诊断能力和电机状态预测效果洁具评估指标,以比较所提出的方法之前和之后的子空间学习算法的信息融合性能。根据比较结果,所提出的方法能够消除与特征参数不太相关的高度冗余参数,从而增强了子空间学习算法的信息融合性能。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2018(20),9
  • 年度 2018
  • 页码 674
  • 总页数 16
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:无监督的特征选择;特征提取;互信息;分形维数;子空间学习算法;

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