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Application Study of Support Vector Regression in State Prediction of PSST

机译:支持向量回归在PSST状态预测中的应用研究

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Spectrometric oil analysis technology is an important method in condition monitoring. This method has been applied to study the state of Power-shift Steering Transmission (PSST) in this paper. But, how to predict the PSST future state using existing data is a difficult work. In order to solve this problem, a support vector regression method is applied. The building process of this method is presented. Radial Basis Function (RBF) is selected as the kernel function. This method is applied to study the spectrometric oil analysis data. During the process, the values of parameters γ and σ are studied using grid search method. And the prediction of spectrometric oil analysis data for PSST is done. A comparative analysis is made between predictive and actual values. The method has been proved that it has better accuracy in prediction, and any possible problem in PSST can be found through a comparative analysis which has important significance for preventing faults.
机译:光谱油分析技术是状态监测的重要方法。该方法已被用于研究动力换挡转向变速器(PSST)的状态。但是,如何使用现有数据预测PSST的未来状态是一项艰巨的工作。为了解决该问题,应用了支持向量回归方法。介绍了此方法的构建过程。选择径向基函数(RBF)作为内核函数。该方法用于研究光谱油分析数据。在此过程中,使用网格搜索方法研究参数γ和σ的值。并对PSST的光谱油分析数据进行了预测。在预测值和实际值之间进行比较分析。实践证明,该方法具有较好的预测精度,通过比较分析可以发现PSST中可能存在的问题,对预防故障具有重要意义。

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