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A Neurodynamic Optimization Approach to Bilevel Linear Programming

机译:双层线性规划的神经动力学优化方法

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This paper presents new results on neurodynamic optimizar tion approach to solve bilevel linear programming problems (BLPPs) with linear inequality constraints. A sub-gradient recurrent neural network is proposed for solving the BLPPs. It is proved that the state convergence time period is finite and can be quantitatively estimated. Compared with existing recurrent neural networks for BLPPs, the proposed neural network does not have any design parameter and can solve the BLPPs in finite time. Some numerical examples are introduced to show the effectiveness of the proposed neural network.
机译:本文提出了关于神经动力学优化方法的新结果,该方法可解决具有线性不等式约束的双层线性规划问题(BLPP)。提出了一种次梯度递归神经网络来求解BLPPs。实践证明,状态收敛时间是有限的,可以定量估计。与现有的BLPP递归神经网络相比,该神经网络没有任何设计参数,可以在有限时间内求解BLPP。介绍了一些数值示例,以证明所提出的神经网络的有效性。

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