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FEM-based neural-network approach to nonlinear modeling with application to longitudinal vehicle dynamics control

机译:基于FEM的神经网络非线性建模方法及其在纵向车辆动力学控制中的应用

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摘要

An finite-element methods (FEM)-based neural-network approach to nonlinear autoregressive with exogenous input (NARX) modeling is presented. The method uses multilinear interpolation functions on C/sup 0/ rectangular elements. The local and global structure of the resulting model is analyzed. It is shown that the model can be interpreted both as a local model network and a single layer feedforward neural network. The main aim is to use the model for nonlinear control design. The proposed FEM NARX description is easily accessible to feedback linearizing control techniques. Its use with a two-degrees of freedom nonlinear internal model controller is discussed. The approach is applied to modeling of the nonlinear longitudinal dynamics of an experimental lorry, using measured data. The modeling results are compared with local model network and multilayer perceptron approaches. A nonlinear speed controller was designed based on the identified FEM model. The controller was implemented in a test vehicle, and several experimental results are presented.
机译:提出了一种基于有限元(FEM)的神经网络方法,利用外源输入进行非线性自回归建模(NARX)。该方法在C / sup 0 /矩形元素上使用多线性插值函数。分析了所得模型的局部和全局结构。结果表明,该模型可以解释为局部模型网络和单层前馈神经网络。主要目的是将模型用于非线性控制设计。所提出的FEM NARX描述易于使用反馈线性化控制技术。讨论了其与两自由度非线性内模控制器的配合使用。该方法适用于使用测量数据对实验卡车的非线性纵向动力学建模。将建模结果与局部模型网络和多层感知器方法进行了比较。基于确定的有限元模型设计了非线性速度控制器。该控制器在测试车辆中实现,并给出了一些实验结果。

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