处理时变超定线性方程组的倒易类张神经网络的形式与结果

Yunong Zhang, Jielong Chen, Shuai Li
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摘要

为了处理时变过定线性方程组(TVOSLE),提出并重新表述了一种新的方法——倒易类张神经网络(ZNRK)。ZNRK模型是由连续时间张神经网络(CTZN)发展而来的,与现有的CTZN模型有很大的不同。也就是说,传统的CTZN模型需要计算系数矩阵的逆。当系数矩阵的维数较大时,系数矩阵的逆很难计算。因此,我们提出的ZNRK模型不需要计算系数矩阵的逆,只需要计算标量的倒数,大大降低了计算复杂度。本文通过3个计算机仿真验证了ZNRK模型的有效性,结果证实了ZNRK模型处理TVOSLE的有效性。研究了ZNRK模型的收敛速率效应,发现收敛时间随着收敛参数的增大而减小。
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Forms and Results of Zhang Neuronet of Reciprocal Kind Dealing with Time-Variant Overdetermined System of Linear Equations
In order to deal with time-variant overdetermined system of linear equations (TVOSLE), a new approach termed Zhang neuronet of reciprocal kind (ZNRK) is proposed and reformulated. As developed from the continuous-time Zhang neuronet (CTZN), the ZNRK model is, however, quite different from existing CTZN models. That is, a conventional CTZN model needs to compute the inverse of the coefficient matrix. When the dimension of the coefficient matrix is large, the inverse of the coefficient matrix is difficult to compute. Hence, we propose the ZNRK model that does not need to compute the inverse of the coefficient matrix, only needing to compute the reciprocal of a scalar, which greatly reduces the computation complexity. In this paper, three computer simulations are used to test the validity of the ZNRK model, and the results substantiate the effectiveness of the ZNRK model for dealing with TVOSLE. Investigating the convergence-rate effect of the ZNRK model, we find that the convergence time decreases with the value of the convergence parameter increasing.
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