Litcius/Paper detail

Distributed Localization for Multi-Agent Systems With Random Noise Based on Iterative Learning

Yunkai Lv, Hao Zhang, Zhuping Wang, Huaicheng Yan

2022IEEE Transactions on Neural Networks and Learning Systems24 citationsDOI

Abstract

This article is concerned with the real-time localization problem for the dynamic multi-agent systems with measurement and communication noises under directed graphs. The barycentric coordinates are introduced to describe the relative position between agents. A novel robust distributed localization estimation algorithm based on iterative learning is proposed. The relative-distance unbiased estimator constructed from the historical iterative information is used to suppress the measurement noise. The designed stochastic approximation method with two iterative-varying gains is used to inhibit the communication noise. Under the zero-mean and independent distributed conditions on the measurement and communication noises, the asymptotic convergence of the proposed methods is derived. The numerical simulation and the QBot-2e robot experiment are conducted to test and verify the effectiveness and the practicability of the proposed methods.

Topics & Concepts

Noise (video)EstimatorComputer scienceConvergence (economics)Iterative learning controlBarycentric coordinate systemIterative methodAlgorithmPosition (finance)Mathematical optimizationMulti-agent systemNoise measurementStochastic approximationMathematicsArtificial intelligenceStatisticsEconomicsComputer securityNoise reductionKey (lock)FinanceControl (management)GeometryEconomic growthImage (mathematics)Distributed Control Multi-Agent SystemsIndoor and Outdoor Localization TechnologiesRobotics and Sensor-Based Localization