Title :
Neural network for mixed nonlinear problems and its applications
Author_Institution :
Coll. of Sci., Guangxi Univ. for Nat., Nanning, China
Abstract :
This paper presents two feedback neural networks for solving a nonlinear and mixed complementarity problem. The first feedback neural network is designed to solve the strictly monotone problem. This one has no parameter and possesses a very simple structure for implementation in hardware. Based on a new idea, the second feedback neural network for solving the monotone problem is constructed by using the first one as a subnetwork. This feedback neural network has the least number of state variables. The stability of a solution of the problem is proved. When the problem is strictly monotone, the unique solution is uniformly and asymptotically stable in the large. When the problem has many solutions, it is guaranteed that, for any initial point, the trajectory of the network does converge to an exact solution of the problem. Feasibility and efficiency of the proposed neural networks are supported by simulation experiments. Moreover, the feedback neural network can also be applied to solve general nonlinear convex programming and nonlinear monotone variational inequalities problems with convex constraints.
Keywords :
asymptotic stability; nonlinear programming; recurrent neural nets; variational techniques; convex constraints; feedback neural networks; mixed complementarity problem; mixed nonlinear problems; nonlinear convex programming; nonlinear monotone variational inequalities problems; simulation experiments; solution stability; asymptotic stability; feedback neural network; nonlinear programming; variational inequalities;
Conference_Titel :
Computer Science and Information Processing (CSIP), 2012 International Conference on
Conference_Location :
Xi´an, Shaanxi
Print_ISBN :
978-1-4673-1410-7
DOI :
10.1109/CSIP.2012.6308829