熊志化, 黄国宏, 邵惠鹤. 基于高斯过程和支持向量机的软测量建模比较及应用研究[J]. 信息与控制, 2004, 33(6): 754-757.
引用本文: 熊志化, 黄国宏, 邵惠鹤. 基于高斯过程和支持向量机的软测量建模比较及应用研究[J]. 信息与控制, 2004, 33(6): 754-757.
XIONG Zhi-hua, HUANG Guo-hong, SHAO Hui-he. Comparison and Application Research on Soft Sensor Modeling Based on Gaussian Processes and Support Vector Machines[J]. INFORMATION AND CONTROL, 2004, 33(6): 754-757.
Citation: XIONG Zhi-hua, HUANG Guo-hong, SHAO Hui-he. Comparison and Application Research on Soft Sensor Modeling Based on Gaussian Processes and Support Vector Machines[J]. INFORMATION AND CONTROL, 2004, 33(6): 754-757.

基于高斯过程和支持向量机的软测量建模比较及应用研究

Comparison and Application Research on Soft Sensor Modeling Based on Gaussian Processes and Support Vector Machines

  • 摘要: 给出了基于高斯过程和支持向量机的软测量建模方法,在不牺牲性能的条件下,高斯过程与支持向量机相比,是一种有着概率意义的核学习机,同时它更容易实现,理论分析和仿真研究表明了高斯过程在软测量建模中的优越性.

     

    Abstract: The comparison between Gaussian processes(GP)and s upport vector machines(SVM)is presented.Theoretical analysis and simulation experiment show that GP-based soft sensor is a probabilistic kernel machine and moderately simple to implement and use without loss of performance compared with SVM,which lays solid base for advanced control system.

     

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