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Selective ensemble of multiple local model learning for nonlinear and nonstationary systems

机译:非线性和非平稳系统的多个局部模型学习的选择性集合

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This paper proposes a selective ensemble of multiple local model learning for modeling and identification of nonlinear and nonstationary systems, in which the set of local linear models are self adapted to capture the newly emerging process characteristics and the prediction of the process output is also self adapted based on an optimally selected ensemble of subset linear local models. Specifically, our selective ensemble of multiple local model learning approach performs the model adaptation at two levels. At the level of local model adaptation, a newly emerging process state in the incoming data is automatically identified and a new local linear model is fitted to this newly emerged process state. At the level of online prediction, a subset of candidate local linear models are optimally selected and the prediction of the process output is computed as an optimal linear combiner of the selected subset local linear models. Two case studies involving chaotic time series prediction and modeling of a real-world industrial microwave heating process are used to demonstrate the effectiveness of our proposed approach, in comparison with other existing methods for modeling and identification of nonlinear and time-varying systems. (C) 2019 Published by Elsevier B.V.
机译:本文提出了一种用于非线性和非平稳系统建模和识别的多重局部模型学习的选择性集合,其中局部线性模型集可自适应以捕获新出现的过程特征,并且过程输出的预测也可自适应基于子集线性局部模型的最佳选择集合。具体来说,我们的多个局部模型学习方法的选择性集合在两个级别上执行模型自适应。在局部模型适应级别,将自动识别传入数据中的新出现的过程状态,并将新的局部线性模型拟合到此新出现的过程状态。在在线预测级别,最佳选择候选局部线性模型的子集,并计算过程输出的预测,作为所选子集局部线性模型的最佳线性组合器。与涉及非线性和时变系统的建模和识别的其他现有方法相比,使用两个涉及混沌时间序列预测和实际工业微波加热过程建模的案例研究来证明我们提出的方法的有效性。 (C)2019由Elsevier B.V.发布

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