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Combining KPCA with Sparse SVM for Nonlinear Process Monitoring

机译:将KPCA与稀疏SVM结合使用以进行非线性过程监控

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A new method for nonlinear process monitoring based on kernel principal analysis and sparse support vector machines is proposed. The data is analyzed using KPCA. T2 and SPE are constructed in the future space. If the T2 and SPE exceed the predefined control limit, a fault may have occurred . Then the nonlinear score vectors are calculated and fed into the sparse SVM to identify the faults. The proposed method is applied to the simulation of Tennessee Eastman (TE) chemical process .The simulation results show that the proposed method can identify various types of faults accurately and rapidly.
机译:提出了一种基于核主成分分析和稀疏支持向量机的非线性过程监控新方法。使用KPCA分析数据。 T 2 和SPE在未来的空间中构建。如果T 2 和SPE超出预定义的控制限制,则可能发生了故障。然后,计算非线性分数矢量,并将其输入到稀疏SVM中以识别故障。该方法应用于田纳西州伊斯曼化学过程的仿真,仿真结果表明,该方法可以准确,快速地识别出各种类型的故障。

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