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On-line nonparametric regression to learn state-dependent disturbances

机译:在线非参数回归以学习状态相关干扰

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A combination of recursive least squares and weighted least squares is made which can adapt its structure such that a relation between in- and output can be approximated, even when the structure of this relation is unknown beforehand. This method can adapt its structure on-line while it preserves information offered by previous samples, making it applicable in a control setting. This method has been tested with computer-generated data, and it is used in a simulation to learn the non-linear state-dependent effects, both with good success.
机译:递归最小二乘和加权最小二乘的组合可以适应其结构,即使输入和输出之间的关系事先未知,也可以对其进行近似。这种方法可以在线调整其结构,同时保留先前样本提供的信息,从而使其可用于控制设置。该方法已经用计算机生成的数据进行了测试,并且在模拟中用于学习非线性状态相关的影响,两者均取得了良好的成功。

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