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Selective recursive kernel learning for online identification of nonlinear systems with NARX form

机译:用于NARX形式的非线性系统在线识别的选择性递归核学习

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摘要

Online identification of nonlinear systems is still an important while difficult task in practice A general and simple online identification method, namely Selective Recursive Kernel Learning (SRKL), is proposed for multi-input-multi-output (MIMO) systems with the nonlinear autoregressive with exogenous Input form A two-stage RKL online identification framework is first formulated. where the Information contained by a sample (i.e, the new arriving or old useless one) can be introduced into and/or deleted from the model, recursively Then, a sparsification strategy to restrict the model complexity is developed to guarantee all the output channels of the MIMO model accurate simultaneously. Specially, a novel pruning approach based on the fast leave-one-out cross-validation criterion is explored to acquire generalization ability by determining and then deleting the useless information Consequently, the model can adaptively adjust its structure to capture the process dynamics The SRKL method is applied intensively to several nonlinear systems for multifold identification aims. The obtained results show that SRKL is superior to traditional methods, e.g. artificial neural networks and fuzzy systems, in different situations The benefits of its accuracy, reliable performance and simple implementation in practice indicate that SRKL is promising for online identification of nonlinear systems.
机译:非线性系统的在线识别在实践中仍然是一项艰巨而艰巨的任务。针对具有非线性自回归的多输入多输出(MIMO)系统,提出了一种通用而简单的在线识别方法,即选择性递归内核学习(SRKL)。外来输入形式首先制定了一个两阶段的RKL在线识别框架。可以递归地将样本中包含的信息(即,新到的或旧的无用的信息)引入模型和/或从模型中删除,然后,开发了一种稀疏化策略来限制模型的复杂性,以保证模型的所有输出通道MIMO模型同时准确。特别地,探索了一种基于快速留一法交叉验证准则的新颖修剪方法,通过确定然后删除无用信息来获得泛化能力。因此,该模型可以自适应地调整其结构以捕获过程动态信息SRKL方法广泛应用于多种非线性系统以实现多重识别。所获得的结果表明,SRKL优于传统方法,例如。人工神经网络和模糊系统,在不同情况下的准确性,可靠的性能以及在实践中易于实现的优势表明SRKL在非线性系统的在线识别方面很有希望。

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