首页> 美国卫生研究院文献>Sensors (Basel Switzerland) >An SVM-Based Classifier for Estimating the State of Various Rotating Components in Agro-Industrial Machinery with a Vibration Signal Acquired from a Single Point on the Machine Chassis
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An SVM-Based Classifier for Estimating the State of Various Rotating Components in Agro-Industrial Machinery with a Vibration Signal Acquired from a Single Point on the Machine Chassis

机译:基于SVM的分类器通过从机架上的单个点获取振动信号来估计农用机械中各种旋转组件的状态

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摘要

The goal of this article is to assess the feasibility of estimating the state of various rotating components in agro-industrial machinery by employing just one vibration signal acquired from a single point on the machine chassis. To do so, a Support Vector Machine (SVM)-based system is employed. Experimental tests evaluated this system by acquiring vibration data from a single point of an agricultural harvester, while varying several of its working conditions. The whole process included two major steps. Initially, the vibration data were preprocessed through twelve feature extraction algorithms, after which the Exhaustive Search method selected the most suitable features. Secondly, the SVM-based system accuracy was evaluated by using Leave-One-Out cross-validation, with the selected features as the input data. The results of this study provide evidence that (i) accurate estimation of the status of various rotating components in agro-industrial machinery is possible by processing the vibration signal acquired from a single point on the machine structure; (ii) the vibration signal can be acquired with a uniaxial accelerometer, the orientation of which does not significantly affect the classification accuracy; and, (iii) when using an SVM classifier, an 85% mean cross-validation accuracy can be reached, which only requires a maximum of seven features as its input, and no significant improvements are noted between the use of either nonlinear or linear kernels.
机译:本文的目的是评估农业机械中各种旋转组件状态的可行性,方法是仅使用从机架上单个点获取的一个振动信号。为此,采用了基于支持向量机(SVM)的系统。实验测试通过从农用收割机的单个点获取振动数据来评估该系统,同时改变了几种工作条件。整个过程包括两个主要步骤。最初,通过十二种特征提取算法对振动数据进行预处理,然后用穷举搜索法选择最合适的特征。其次,通过使用“留一法”交叉验证(以所选特征作为输入数据)评估基于SVM的系统准确性。这项研究的结果提供了证据:(i)通过处理从机器结构上单个点获取的振动信号,可以准确估计农业工业机械中各种旋转组件的状态; (ii)可以使用单轴加速度计获取振动信号,其方向不会显着影响分类精度; (iii)使用SVM分类器时,可以达到85%的平均交叉验证准确度,最多仅需要七个特征作为输入,并且在使用非线性或线性内核之间没有发现明显的改进。

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