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Nonlinear Hybrid Systems Identification using Kernel-Based Techniques ?

机译:非线性混合系统使用基于内核的技术来识别

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Hybrid systems can describe in an unified setting many processes which combine continuous/discrete dynamics and logic rules. Their identification from input/output data is however difficult since it requires to jointly solve a classification and estimation problem. Restricting the attention to piecewise linear models, recent research has shown how these difficulties can be successfully faced combining Gaussian regression and stochastic simulation techniques. In this paper we extend this approach to systems composed by nonlinear submodels. Numerical examples regarding estimation of discontinuous functions and identification of piecewise nonlinear dynamic systems are then included to illustrate the potential of the new approach.
机译:混合系统可以在统一的设置中描述许多组合连续/离散动态和逻辑规则的过程。然而,它们从输入/输出数据的识别难以共同解决分类和估计问题。限制分段线性模型的注意,最近的研究表明这些困难如何成功地结合高斯回归和随机仿真技术。在本文中,我们将这种方法扩展到由非线性子模型组成的系统。然后包括关于不连续功能估计的数值例子和分段非线性动态系统的识别,以说明新方法的潜力。

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