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Support Vector Machine based parameter identification and diminishment of parametric drift

机译:支持向量机基于参数识别和参数漂移的递减

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Support Vector Machine is applied to the modeling of a nonlinear dynamic system. Linear kernel is adopted in sample training and the parameters in the mathematical model are calculated by resultant lagrangian factors and support vectors. To diminish the parameter drift in identification, training samples are reconstructed by difference method. Correlation analysis demonstrates the validity of reconstruction. Based on the regressive mathematical model, the dynamics of the system is predicted and comparison between predicted results and test results confirms the parameters identified.
机译:支持向量机应用于非线性动态系统的建模。 采用线性内核在样本训练中采用,数学模型中的参数由结果拉格朗日因子和支持向量计算。 为了在识别中减少参数漂移,通过差异方法重建训练样本。 相关性分析表明重建的有效性。 基于回归数学模型,预测系统的动态和预测结果与测试结果之间的比较证实了所识别的参数。

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