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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Zhang Neural Network for Online Solution of Time-Varying Linear Matrix Inequality Aided With an Equality Conversion
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Zhang Neural Network for Online Solution of Time-Varying Linear Matrix Inequality Aided With an Equality Conversion

机译:张神经网络的时变线性矩阵不等式的在线等式转换

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摘要

In this paper, for online solution of time-varying linear matrix inequality (LMI), such an LMI is first converted to a time-varying matrix equation by introducing a time-varying matrix, of which each element is greater than or equal to zero. Then, by employing Zhang 's neural dynamic method, a special recurrent neural network termed Zhang neural network (ZNN) is proposed and investigated for solving online the converted time-varying matrix equation as well as the time-varying LMI. Such a ZNN model showed in an explicit dynamics exploits the time-derivative information of time-varying coefficients. In addition, theoretical analysis and results of the proposed ZNN model are discussed and presented to show its excellent performance on solving the time-varying LMI. Computer simulation results further demonstrate the efficacy of the proposed ZNN model for online solution of the time-varying LMI and the converted time-varying matrix equation.
机译:本文针对时变线性矩阵不等式(LMI)的在线解决方案,首先通过引入时变矩阵来将这种LMI转换为时变矩阵方程,该矩阵的每个元素均大于或等于零。 。然后,采用张氏的神经动力学方法,提出了一种特殊的递归神经网络,称为张氏神经网络(ZNN),用于在线求解转换后的时变矩阵方程和时变LMI。这种在显式动力学中显示的ZNN模型利用时变系数的时导信息。此外,讨论并提出了所提出的ZNN模型的理论分析和结果,以显示其在解决时变LMI方面的出色性能。计算机仿真结果进一步证明了所提出的ZNN模型对于时变LMI和转换后的时变矩阵方程的在线求解的有效性。

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