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首页> 外文期刊>Kybernetika >A GLOBALLY CONVERGENT NEURODYNAMICS OPTIMIZATION MODEL FOR MATHEMATICAL PROGRAMMING WITH EQUILIBRIUM CONSTRAINTS
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A GLOBALLY CONVERGENT NEURODYNAMICS OPTIMIZATION MODEL FOR MATHEMATICAL PROGRAMMING WITH EQUILIBRIUM CONSTRAINTS

机译:具有均衡约束的数学规划的全球收敛神经动力学优化模型

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This paper introduces a neurodynamics optimization model to compute the solution of mathematical programming with equilibrium constraints (MPEC). A smoothing method based on NPC-function is used to obtain a relaxed optimization problem. The optimal solution of the global optimization problem is estimated using a new neurodynamic system, which, in finite time, is convergent with its equilibrium point. Compared to existing models, the proposed model has a simple structure, with low complexity. The new dynamical system is investigated theoretically, and it is proved that the steady state of the proposed neural network is asymptotic stable and global convergence to the optimal solution of MPEC. Numerical simulations of several examples of MPEC are presented, all of which confirm the agreement between the theoretical and numerical aspects of the problem and show the effectiveness of the proposed model. Moreover, an application to resource allocation problem shows that the new method is a simple, but efficient, and practical algorithm for the solution of real-world MPEC problems.
机译:本文介绍了神经动力学优化模型,以计算具有均衡约束的数学规划解决方案(MPEC)。基于NPC函数的平滑方法用于获得放松的优化问题。使用新的神经动力学系统估计全局优化问题的最佳解决方案,该系统在有限时间内与其平衡点进行会聚。与现有型号相比,所提出的模型具有简单的结构,具有低复杂性。从理论上调查了新的动态系统,证明了所提出的神经网络的稳定状态是对MPEC的最佳解决方案的渐近状态和全球收敛。提出了几个MPEC示例的数值模拟,所有这些模拟都证实了问题的理论和数值方面之间的协议,并显示了所提出的模型的有效性。此外,资源分配问题的应用表明,新方法是一个简单但有效,实用的实用算法,用于解决现实世界的MPEC问题。

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