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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Novel approaches for parameter estimation of local linear models for dynamical system identification
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Novel approaches for parameter estimation of local linear models for dynamical system identification

机译:用于动力学系统辨识的局部线性模型参数估计的新方法

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摘要

In this paper we introduce two novel techniques for local linear modeling of dynamical systems. As in the standard approach, we use vector quantization (VQ) algorithms, such as the Self-Organizing Map, to partition the joint input-output space into smaller regions. Then, to each neuron we associate a vector of parameters which must be suitably estimated. The first estimation technique uses the prototypes of the i-th neuron and its K nearest neighbors to build the corresponding local linear model. The second technique builds the i-th local linear model using the data vectors that are mapped into the regions comprised of the Voronoi cells of the i-th neuron and its K nearest neighbors. A comprehensive evaluation of the proposed techniques is carried out for the task of inverse identification of three benchmarking Single Input/Single Output (SISO) dynamical systems. Their performances are compared to those achieved by the Multilayer Perceptron and the Extreme Learning Machine networks. We also evaluate how robust are the proposed techniques with respect to the VQ algorithm used to partition the input-output space. The results show that proposed techniques consistently outperform standard approaches for all evaluated datasets.
机译:在本文中,我们介绍了两种用于动态系统局部线性建模的新技术。与标准方法一样,我们使用矢量量化(VQ)算法(例如自组织映射)将联合输入输出空间划分为较小的区域。然后,对于每个神经元,我们关联一个必须适当估计的参数向量。第一种估计技术使用第i个神经元及其K个最近邻居的原型来构建相应的局部线性模型。第二种技术使用数据向量构建第i个局部线性模型,该数据向量映射到第i个神经元的Voronoi细胞及其K个最近邻居组成的区域中。对提出的技术进行了全面的评估,以完成对三个基准单输入/单输出(SISO)动态系统的逆向识别任务。将其性能与多层感知器和极限学习机网络实现的性能进行比较。我们还评估了所提出的技术相对于用于划分输入输出空间的VQ算法的鲁棒性。结果表明,对于所有评估的数据集,所提出的技术始终优于标准方法。

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