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Global exponential stability of discrete-time recurrent neural network for solving quadratic programming problems subject to linear constraints

机译:求解线性约束下的二次规划问题的离散时间递归神经网络的全局指数稳定性

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摘要

In this paper, a discrete-time recurrent neural network with global exponential stability is proposed for solving linear constrained quadratic programming problems. Compared with the existing neural networks for quadratic programming, the proposed neural network in this paper has lower model complexity with only one-layer structure. Moreover, the global exponential stability of the neural network can be guaranteed under some mild conditions. Simulation results with some applications show the performance and characteristic of the proposed neural network.
机译:为了解决线性约束二次规划问题,提出了一种具有全局指数稳定性的离散时间递归神经网络。与现有的用于二次编程的神经网络相比,本文提出的神经网络具有较低的模型复杂度,并且只有一层结构。此外,在某些温和条件下可以保证神经网络的全局指数稳定性。仿真结果和一些应用表明了所提出的神经网络的性能和特性。

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