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Integrated OBF-NN models for extrapolation enhancement in conventional neural networks for nonlinear systems

机译:用于非线性系统传统神经网络的外推增强的集成OBF-NN模型

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In this paper the integration of linear and nonlinear models in parallel for nonlinear system identification is investigated. A residuals-based sequential identification algorithm using parallel integration of linear Orthornormal basis filters (OBF) and a nonlinear feedforward (MLP) NN model is used and applied to the nonlinear Van de Vusse reactor. Results show improved extrapolation capability of the proposed method in comparison to conventional MLP NN, and opens up a promising area for further research and analysis.
机译:本文研究了线性和非线性模型并行用于非线性系统识别的整合。使用平行整合线性矫形器基滤波器(OBF)和非线性前馈(MLP)NN模型的基于残差的顺序识别算法,并应用于非线性van de Vusse反应堆。结果表明,与传统的MLP NN相比,提出了该方法的推断能力,并开辟了一个有望的区域,以进一步研究和分析。

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