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Multi-UAV obstacle avoidance control via multi-objective social learning pigeon-inspired optimization

Wanying Ruan, Haibin Duan

2020Frontiers of Information Technology & Electronic Engineering46 citationsDOI

Abstract

We propose multi-objective social learning pigeon-inspired optimization (MSLPIO) and apply it to obstacle avoidance for unmanned aerial vehicle (UAV) formation. In the algorithm, each pigeon learns from the better pigeon but not necessarily the global best one in the update process. A social learning factor is added to the map and compass operator and the landmark operator. In addition, a dimension-dependent parameter setting method is adopted to improve the blindness of parameter setting. We simulate the flight process of five UAVs in a complex obstacle environment. Results verify the effectiveness of the proposed method. MSLPIO has better convergence performance compared with the improved multi-objective pigeon-inspired optimization and the improved non-dominated sorting genetic algorithm.

Topics & Concepts

Obstacle avoidanceComputer scienceObstacleSortingProcess (computing)Artificial intelligenceDimension (graph theory)Convergence (economics)BlindnessOperator (biology)Mathematical optimizationMachine learningAlgorithmMathematicsMobile robotGeographyRepressorPure mathematicsRobotOperating systemMedicineGeneArchaeologyEconomic growthChemistryEconomicsTranscription factorOptometryBiochemistryRobotic Path Planning AlgorithmsDistributed Control Multi-Agent SystemsRobotics and Sensor-Based Localization