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Complex-valued Zhang neural network for online complex-valued time-varying matrix inversion

机译:在线复值时变矩阵求逆的复值张神经网络

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摘要

In this paper, a new complex-valued recurrent neural network (CVRNN) called complex-valued Zhang neural network (CVZNN) is proposed and simulated to solve the complex-valued time-varying matrix-inversion problems. Such a CVZNN model is designed based on a matrix-valued error function in the complex domain, and utilizes the complex-valued first-order time-derivative information of the complex-valued time-varying matrix for online inversion. Superior to the conventional complex-valued gradient-based neural network (CVGNN) and its related methods, the state matrix of the resultant CVZNN model can globally exponentially converge to the theoretical inverse of the complex-valued time-varying matrix in an error-free manner. Moreover, by exploiting the design parameter γ>1, superior convergence can be achieved for the CVZNN model to solve such complex-valued time-varying matrix inversion problems, as compared with the situation without design parameter γ involved (i.e., the situation with γ=1). Computer-simulation results substantiate the theoretical analysis and further demonstrate the efficacy of such a CVZNN model for online complex-valued time-varying matrix inversion.
机译:本文针对复杂值时变矩阵求逆问题,提出了一种新的复杂值递归神经网络(CVRNN),称为复杂值张神经网络(CVZNN)。这种CVZNN模型是基于复域中的矩阵值误差函数设计的,并利用复值时变矩阵的复值一阶时间导数信息进行在线求逆。优于常规的基于复数梯度的神经网络(CVGNN)及其相关方法,生成的CVZNN模型的状态矩阵可以在无误差的情况下全局指数收敛于复数时变矩阵的理论逆方式。此外,通过利用设计参数γ> 1,与不涉及设计参数γ的情况(即,具有γ的情况)相比,CVZNN模型可以很好地收敛,以解决此类复杂值时变矩阵求逆问题。 = 1)。计算机仿真结果证实了理论分析,并进一步证明了这种CVZNN模型对于在线复值时变矩阵求逆的有效性。

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