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Recursive NARX model identification of nonlinear chemical processes with matrix invertibility analysis

机译:基于矩阵可逆性分析的非线性化学过程的递归NARX模型识别

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In the learning techniques based on kernel or orthogonal basis functions, the nonlinearity in the underlying complex dynamic process is modelled by a linear combination of a set of kernel or orthogonal basis functions. Once these functional parameters are selected, the learning task boils down to solving linear least squares (LS). This has motivated the development of various recursive learning algorithms, where matrix inversion is intrinsic in solving LS problems. However, what has not attracted much attention along this track is the analysis of the matrix invertibility conditions in the recursive algorithms. This analysis is especially important when a model is sequentially downdated from the data, which may lead to rank deficiency. The main contribution of this work is the analysis of these conditions, in the formulation of a recursive NARX algorithm based on radial basis functions (RBF-NARX). Aiming at identifying nonlinear and nonstationary time series, RBF-NARX also features a fast algorithm with combined down-dating and updating in a single learning step. Both the necessary conditions for checking the singularity of the regressor matrices and the sufficient conditions for ensuring their invertibility are proved. The performance of RBF-NARX and the invertibility conditions are tested and verified by the data from chemical processes. (C) 2018 Elsevier Ltd. All rights reserved.
机译:在基于核或正交基函数的学习技术中,底层复杂动态过程中的非线性是通过一组核或正交基函数的线性组合来建模的。一旦选择了这些功能参数,学习任​​务就可以归结为求解线性最小二乘(LS)。这激发了各种递归学习算法的发展,其中矩阵求逆是解决LS问题所固有的。然而,沿着递归算法分析矩阵可逆性条件并没有引起人们的广泛关注。当从数据中顺序降级模型时,此分析尤其重要,这可能会导致等级不足。这项工作的主要贡献是在基于径向基函数(RBF-NARX)的递归NARX算法的制定中,对这些条件的分析。为了识别非线性和非平稳时间序列,RBF-NARX还具有在单个学习步骤中结合了降级和更新的快速算法。证明了检查回归矩阵的奇异性的必要条件和确保其可逆性的充分条件。 RBF-NARX的性能和可逆性条件通过化学过程中的数据进行测试和验证。 (C)2018 Elsevier Ltd.保留所有权利。

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