Abstract
Multi-agent systems are promising for applications in various fields. However, they require optimization algorithms that can handle large number of agents and heterogeneously connected networks in clustered environments. Planning algorithms performed in the decentralized communication model and clustered environment require precise knowledge about cluster information by compensating noise from other clusters. This article proposes a decentralized data aggregation algorithm using consensus method to perform COUNT and SUM aggregation in a clustered environment. The proposed algorithm introduces a trust value to perform accurate aggregation on cluster level. The correction parameter is used to adjust the accuracy of the solution and the computation time. The proposed algorithm is evaluated in simulations with large and sparse networks and small bandwidth. The results show that the proposed algorithm can achieve convergence on the aggregated data with reasonable accuracy and convergence time. In the future, the proposed tools will be useful for developing a robust decentralized task assignment algorithm in a heterogeneous multi-agent multi-task environment.
Funder
Unmanned Vehicles Core Technology Research and Development Program through the National Research Foundation of Korea
Unmanned Vehicle Advanced Research Center
Ministry of Science and ICT, the Republic of Korea
Reference37 articles.
1. Optimal on-line estimation of the size of a dynamic multicast group;Alouf,2002
2. Extrema propagation: fast distributed estimation of sums and network sizes;Baquero;IEEE Transactions on Parallel and Distributed Systems,2012
3. The auction algorithm: a distributed relaxation method for the assignment problem;Bertsekas;Annals of Operations Research,1988
4. Relief and emergency communication network based on an autonomous decentralized uav clustering network;Bupe,2015
5. Consensus-based decentralized auctions for robust task allocation;Choi;IEEE Transactions on Robotics,2009