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A Novel Neurodynamic Approach to Constrained Complex-Variable Pseudoconvex Optimization

机译:约束复杂变量伪凸优化的一种新的神经动力学方法

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摘要

Complex-variable pseudoconvex optimization has been widely used in numerous scientific and engineering optimization problems. A neurodynamic approach is proposed in this paper for complex-variable pseudoconvex optimization problems subject to bound and linear equality constraints. An efficient penalty function is introduced to guarantee the boundedness of the state of the presented neural network, and make the state enter the feasible region of the considered optimization in finite time and stay there thereafter. The state is also shown to be convergent to an optimal point of the considered optimization. Compared with other neurodynamic approaches, the presented neural network does not need any penalty parameters, and has lower model complexity. Furthermore, some additional assumptions in other existing related neural networks are also removed in this paper, such as the assumption that the objective function is lower bounded over the equality constraint set and so on. Finally, some numerical examples and an application in beamforming formulation are provided.
机译:复变量伪凸优化已广泛应用于许多科学和工程优化问题。针对约束和线性等式约束的复变量伪凸优化问题,本文提出了一种神经动力学方法。引入了有效的罚函数以保证所提出的神经网络的状态的有界性,并使状态在有限时间内进入所考虑的优化的可行区域并在此之后停留。状态也显示为收敛到所考虑优化的最佳点。与其他神经动力学方法相比,提出的神经网络不需要任何惩罚参数,并且模型复杂度较低。此外,本文还删除了其他现有相关神经网络中的一些其他假设,例如目标函数在等式约束集上的下界等。最后,提供了一些数值示例和在波束成形公式中的应用。

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