Xia Youshen, Wang Jun
Department of Applied Mathematics, Nanjing University of Posts and Telecommunications, Nanjing, China.
IEEE Trans Neural Netw. 2004 Mar;15(2):318-28. doi: 10.1109/TNN.2004.824252.
Recently, a projection neural network for solving monotone variational inequalities and constrained optimization problems was developed. In this paper, we propose a general projection neural network for solving a wider class of variational inequalities and related optimization problems. In addition to its simple structure and low complexity, the proposed neural network includes existing neural networks for optimization, such as the projection neural network, the primal-dual neural network, and the dual neural network, as special cases. Under various mild conditions, the proposed general projection neural network is shown to be globally convergent, globally asymptotically stable, and globally exponentially stable. Furthermore, several improved stability criteria on two special cases of the general projection neural network are obtained under weaker conditions. Simulation results demonstrate the effectiveness and characteristics of the proposed neural network.
最近,一种用于求解单调变分不等式和约束优化问题的投影神经网络被开发出来。在本文中,我们提出了一种通用的投影神经网络,用于求解更广泛的一类变分不等式及相关优化问题。除了结构简单和复杂度低之外,所提出的神经网络还包含现有的用于优化的神经网络,如投影神经网络、原始对偶神经网络和对偶神经网络,作为其特殊情况。在各种温和条件下,所提出的通用投影神经网络被证明是全局收敛的、全局渐近稳定的和全局指数稳定的。此外,在较弱条件下获得了关于通用投影神经网络两个特殊情况的几个改进的稳定性准则。仿真结果证明了所提出神经网络的有效性和特性。