Title :
Hybridisation of neural networks and genetic algorithms for time-optimal control
Author :
Chaiyaratana, Nachol ; Zalzala, Ali M S
Author_Institution :
Dept. of Production Eng., King Mongkut´´s Inst. of Technol., Bangkok, Thailand
Abstract :
This paper presents the use of neural networks and genetic algorithms in time-optimal control of a closed-loop robotic system. Radial-basis function networks are used in conjunction with PID controllers in an independent joint position control to reduce tracking errors. The results indicate that using neural network controllers is more effective than using the trajectory pre-shaping scheme, reported in early literature. Subsequently, a genetic algorithm with a weighted-sum approach and a multi-objective genetic algorithm (MOGA) are used to solve a multi-objective optimisation problem related to time-optimal control. The results indicate that the MOGA is the best method in terms of the Pareto front coverage while the genetic algorithm with a weighted-sum approach is more effective in terms of finding the best individual according to the weighted-sum criteria. As a result of using both neural networks and genetic algorithms in this application, an idea of a task hybridisation between neural networks and genetic algorithms for use in a control system is also effectively demonstrated
Keywords :
closed loop systems; genetic algorithms; manipulator dynamics; neurocontrollers; position control; radial basis function networks; three-term control; PID controllers; Pareto front coverage; best individual finding; closed-loop robotic system; genetic algorithms; independent joint position control; multi-objective genetic algorithm; multi-objective optimisation problem; neural network controllers; neural networks; radial-basis function networks; task hybridisation; time-optimal control; tracking error reduction; weighted-sum approach; Actuators; Control systems; Genetic algorithms; Motion control; Neural networks; Open loop systems; Optimal control; Robots; Shape control; Torque;
Conference_Titel :
Evolutionary Computation, 1999. CEC 99. Proceedings of the 1999 Congress on
Conference_Location :
Washington, DC
Print_ISBN :
0-7803-5536-9
DOI :
10.1109/CEC.1999.781951