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A novel LOO based two-stage method for automatic model identification of a class of nonlinear dynamic systems

机译:基于LOO的新型两阶段非线性动力学系统模型自动识别方法

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This paper investigates the construction of models for a class of nonlinear systems that can be represented by linear in parameter models. This is not a trivial problem, as there are many possible combinations of model terms and exhaustive search is not an option when the number of possible model terms is large. Most existing fast approaches such as orthogonal least squares (OLS), fast recursive algorithm (FRA) and their variants serve the purpose of fast selection. However, these stepwise forward methods are greedy approaches in general and the resultant models are not optimal. Further, they do not control the model complexity (i.e. automatically stop the model selection). The two stage algorithm may improve the compactness of models obtained from forward algorithms, again, it does not determine how many model terms are necessary. Recently, some cross validation based methods have been proposed for automatic model construction, based on leave-one-out (LOO) criteria and OLS or FRA, however the issues related to the forward selection algorithms still exist. Further, LOO based methods are computationally expensive as the model often has to be trained N times (N is the number of samples) for just only one evaluation of the LOO criterion. In this paper, a novel and fast two stage algorithm is proposed for automatic construction of linear in parameter models for a class of nonlinear systems using LOO criterion, overcoming the disadvantages of stepwise model selection algorithms and reducing the computational complexity in applying the LOO criteria. Two numerical examples are presented to confirm its effectiveness.
机译:本文研究了一类非线性系统的模型构建,该模型可以用参数模型中的线性表示。这不是一个小问题,因为模型项有许多可能的组合,并且当可能的模型项的数量很大时,穷举搜索也不是一种选择。大多数现有的快速方法,例如正交最小二乘(OLS),快速递归算法(FRA)及其变体,都可用于快速选择。但是,这些逐步前进的方法通常是贪婪的方法,因此生成的模型也不是最佳的。此外,它们不控制模型的复杂性(即自动停止模型选择)。二级算法可以提高从正向算法获得的模型的紧凑性,同样,它不能确定需要多少个模型项。近来,已经提出了基于留一法(LOO)标准和OLS或FRA的一些基于交叉验证的自动模型构建方法,但是与前向选择算法相关的问题仍然存在。此外,基于LOO的方法的计算量很大,因为仅对LOO准则进行一次评估就经常需要对模型进行N次训练(N是样本数)。本文提出了一种新颖且快速的两阶段算法,该算法可以使用LOO准则自动构建一类非线性系统的参数模型中的线性模型,克服了逐步选择模型算法的弊端,并降低了应用LOO准则时的计算复杂性。给出两个数值示例,以确认其有效性。

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