Publication | Closed Access
Evolutionary multi-objective optimization in robot soccer system for education
67
Citations
18
References
2009
Year
Artificial IntelligenceEngineeringField RoboticsEvolutionary AlgorithmsIntelligent SystemsRobot Soccer SystemEvolutionary Multimodal OptimizationTrajectory PlanningFuzzy Path PlannerSystems EngineeringRobot LearningMultirobot SystemMulti-agent PlanningPath PlanningIntelligent OptimizationProbability VectorsEvolutionary ProgrammingEvolutionary Multi-objective OptimizationAi PlanningRobotics
As the robot soccer system becomes stabilized, it has been used as an educational platform with which various topics on mobile robotics can be taught. As one of key topics in the education of mobile robotics is computational intelligence-based navigation, this paper proposes a multiobjective population-based incremental learning (MOPBIL) algorithm to obtain the fuzzy path planner for optimal path to the ball, minimizing three objectives such as elapsed time, heading direction and posture angle errors in a robot soccer system. MOPBIL employs the probabilistic mechanism, which generates new population using probability vectors. As the probability vectors are updated by referring to nondominated solutions, population converges to Pareto-optimal solution set. Simulation and experiment results show the effectiveness of the proposed MOPBIL from the viewpoint of the proximity to the Pareto-optimal set, size of the dominated space, coverage of two sets and diversity metric. By implementing each of the solutions into the educational platform, it can be educated how multi-objective optimization is realized in the real-world problem.
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