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Adaptive Feedforward Control for Dynamically Substructured Systems Based on Neural Network Compensation

机译:基于神经网络补偿的动态子结构系统的自适应前馈控制

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The potential applications of dynamically substructured systems (DSS) with both numerical and physical substructures can be found in diverse dynamics testing fields. In this paper, a feedforward adaptive controller based on a neural network (NN) is proposed to improve the DSS testing performance. To facilitate the NN compensation design, a modified DSS framework is developed so that the DSS control can be considered as a regulation problem with disturbance rejection. Then an NN feedforward compensation technique is proposed to cope with uncertainties and nonlinearities in the DSS physical substructure. The proposed NN technique generalizes the existing results in the literature. Real-time experimental results on a mechanical test rig demonstrate the improved performance by using the NN compensation strategy.
机译:可以在不同的动态测试字段中找到动态子结构系统(DSS)与数值和物理子结构的潜在应用。本文提出了一种基于神经网络(NN)的前馈自适应控制器来改善DSS测试性能。为了便于NN补偿设计,开发了一种修改的DSS框架,使得DSS控制可以被认为是扰动抑制的调节问题。然后提出了NN馈电补偿技术以应对DSS物理下部结构中的不确定性和非线性。所提出的NN技术概括了文献中的现有结果。机械测试钻机的实时实验结果通过使用NN补偿策略来展示改进的性能。

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