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More than Newton iterations generalized from Zhang neural network for constant matrix inversion aided with line-search algorithm

机译:借助线搜索算法,不止张神经网络对牛顿迭代进行了常数矩阵求逆

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摘要

Since 12 March 2001, Zhang et al have proposed a special class of recurrent neural networks for online time-varying problems solving, especially for matrix inversion. For possible hardware (e.g., digital-circuit) realization, such Zhang neural networks (ZNN) could also be reformulated in the discrete-time form, which incorporates Newton iteration as a special case. In this paper, for constant matrix inversion, we generalize and investigate more discrete-time ZNN models (which could also be termed as ZNN iterations) by using multiple-point backward-difference formulas. For fast convergence to the theoretical inverse, a line-search algorithm is employed to obtain an appropriate step-size value (in each iteration). Computer-simulation results demonstrate the efficacy of the presented new discrete-time ZNN models aided with a line-search algorithm, as compared to Newton iteration.
机译:自2001年3月12日以来,Zhang等人提出了一类特殊的递归神经网络,用于解决在线时变问题,尤其是矩阵求逆。对于可能的硬件(例如,数字电路)实现,也可以以离散时间形式重新构造诸如张神经网络(ZNN),这是牛顿迭代的特例。在本文中,对于常数矩阵求逆,我们使用多点后向差分公式来推广和研究更多离散时间ZNN模型(也可以称为ZNN迭代)。为了快速收敛至理论逆,采用线搜索算法来获取适当的步长值(在每次迭代中)。计算机仿真结果表明,与牛顿迭代相比,借助线搜索算法,所提出的新离散时间ZNN模型的功效。

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