Leung Y, Chen K Z, Jiao Y C, Gao X B, Leung K S
Department of Geography and Resource Management, Centre for Environmental Policy and Resource Management, and Joint Laboratory for Geoinformation Science, The Chinese University of Hong Kong, Hong Kong.
IEEE Trans Neural Netw. 2001;12(5):1074-83. doi: 10.1109/72.950137.
A new gradient-based neural network is constructed on the basis of the duality theory, optimization theory, convex analysis theory, Lyapunov stability theory, and LaSalle invariance principle to solve linear and quadratic programming problems. In particular, a new function F(x, y) is introduced into the energy function E(x, y) such that the function E(x, y) is convex and differentiable, and the resulting network is more efficient. This network involves all the relevant necessary and sufficient optimality conditions for convex quadratic programming problems. For linear programming and quadratic programming (QP) problems with unique and infinite number of solutions, we have proven strictly that for any initial point, every trajectory of the neural network converges to an optimal solution of the QP and its dual problem. The proposed network is different from the existing networks which use the penalty method or Lagrange method, and the inequality constraints are properly handled. The simulation results show that the proposed neural network is feasible and efficient.
基于对偶理论、优化理论、凸分析理论、李雅普诺夫稳定性理论和拉萨尔不变性原理构建了一种新的基于梯度的神经网络,用于解决线性和二次规划问题。特别地,在能量函数(E(x, y))中引入了一个新函数(F(x, y)),使得函数(E(x, y))是凸的且可微的,从而得到的网络效率更高。该网络涉及凸二次规划问题的所有相关必要和充分最优性条件。对于具有唯一解和无穷多解的线性规划和二次规划(QP)问题,我们严格证明了对于任何初始点,神经网络的每条轨迹都收敛到QP及其对偶问题的最优解。所提出的网络与现有的使用惩罚法或拉格朗日法的网络不同,并且对不等式约束进行了适当处理。仿真结果表明所提出的神经网络是可行且高效的。