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Differential neural network identifier with composite learning laws for uncertain nonlinear systems

机译:具有综合学习法的差分神经网络标识法不确定非线性系统

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摘要

This manuscript describes the design and numerical implementation of a novel composite differential neural network aimed to estimate nonlinear uncertain systems. A differential neural network (DNN) with a composite feedback matrix approximates the structure of non-linear uncertain systems. The feedback matrix is assumed to belong to a convex set as well as the free parameters of the DNN (weights) at any instant of time. Therefore, ?-different DNN works in parallel. A composite Lyapunov function finds the convex hull approximation of the set of DNN working together to improve the approximation capabilities of classical neural networks. The main result of this study shows the practical stability of the estimation error. Numerical simulations demonstrate the approximation capabilities of the composite DNN implemented in a Van Der Pol oscillator where the presence of high-frequency components makes difficult a classical DNN approximation.
机译:该稿件描述了一种用于估计非线性不确定系统的新型复合差分神经网络的设计和数值实现。具有复合反馈矩阵的差分神经网络(DNN)近似于非线性不确定系统的结构。假设反馈矩阵属于在任何时间内的DNN(权重)的凸面集以及DNN(权重)的自由参数。因此, - 多样化DNN并行工作。复合Lyapunov函数发现凸面近似的DNN集合,以提高经典神经网络的近似能力。本研究的主要结果显示了估计误差的实际稳定性。数值模拟展示了在VAN der POL振荡器中实现的复合DNN的近似能力,其中高频分量的存在使得难以进行经典的DNN近似。

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