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An Unsupervised Feature Selection Method Based on Information Entropy

机译:基于信息熵的无监督特征选择方法

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Brushless Direct Current Motor (BLDC) is a power supply unit of the Multi Rotor Unmanned Aerial Vehicle (Multi Rotor UAV). Whether it is safe and reliable directly affects the reliability level of the Multi Rotor UAV. By obtaining the BLDC operating state characteristics (including faults and failures), and accurately determining its working state, the safety, mission success and economy of the BLDC can be improved. At present, the research work on the feature extraction of operating state is mostly based on single-parameter uniaxial expansion. There may be redundant and irrelevant information between the features obtained by different feature extraction methods, which makes the BLDC running state features difficult to be accurately grasped. Therefore, this paper takes the BLDC of Multi Rotor UAV as the research object, and comprehensively utilizes feature extraction technology, unsupervised mutual information feature selection technology and kernel principal component analysis fusion technology to study multi-features, multiaxial comprehensive feature extraction method based on BLDC vibration data. This paper provides an effective method for BLDC operation status judgment, and provides data support for BLDC life-cycle health management work.
机译:无刷直流电机(BLDC)是多转子无人机(多转子UAV)的电源单元。无论是安全可靠的直接影响多转子UAV的可靠性水平。通过获得BLDC运行状态特征(包括故障和故障),可以提高BLDC的安全性,使命成功和经济性。目前,关于操作状态的特征提取的研究工作主要是基于单参数单轴扩张。通过不同特征提取方法获得的特征之间可能存在冗余和无关的信息,这使得BLDC运行状态特征难以准确地掌握。因此,本文采用了多转子UAV的BLDC作为研究对象,并综合利用特征提取技术,无监督的互信息特征选择技术和内核主成分分析融合技术,以研究基于BLDC的多轴综合特征提取方法振动数据。本文为BLDC运行状态判断提供了一种有效的方法,为BLDC生命周期健康管理工作提供了数据支持。

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