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MATLAB Simulink Modeling and Simulation of Zhang Neural Network for Online Time-Varying Matrix Inversion

机译:张神经网络的MATLAB SIMULINK建模与张神经网络在线时变矩阵反转

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Recently, a special kind of recurrent neural networks (RNN) with implicit dynamics has been proposed by Zhang et al for online time-varying problems solving (such as time-varying matrix inversion). Such a neural-dynamic system is elegantly designed by defining a matrix-valued error function rather than the usual scalar-valued norm-based error function. Its computational error can be made decrease to zero globally and exponentially. For the final purpose of field programmable gate array (FPGA) and application-specific integrated circuit (ASIC) realization, we investigate in this paper the MATLAB Simulink modeling and simulative verification of such a Zhang neural network (ZNN). By using click-and-drag mouse operations, it is easier to model and simulate in comparison with MATLAB coding. Both convergence and robustness properties of such a ZNN model are analyzed, which substantiate the effectiveness of Zhang neural network on inverting the time-varying matrices.
机译:最近,Zhang等人已经提出了一种特殊的经常性神经网络(RNN),用于Zhang等人进行在线时变化问题(例如时变矩阵反转)。这种神经动态系统通过定义矩阵值误差函数而不是通常的标量标值基于符号的误差函数而典雅设计。它的计算误差可以在全球和指数上降低到零。对于现场可编程门阵列(FPGA)和特定于应用专用电路(ASIC)实现的最终目的,我们在本文中调查了这种张神经网络(ZnN)的Matlab Simulink建模和模拟验证。通过使用点击和拖动鼠标操作,与Matlab编码相比,更容易模拟和模拟。分析了这种ZNN模型的收敛性和鲁棒性能,这证明了张神经网络对反转时变矩阵的有效性。

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