Title :
On Scaling Multi-Agent Task Reallocation Using Market-Based Approach
Author :
Karmani, R.K. ; Latvala, T. ; Agha, Gul
Author_Institution :
Univ. of Illinois, Urbana
Abstract :
Multi-agent systems (MAS) provide a promising technology for addressing problems such as search and rescue missions, mine sweeping, and surveillance. These problems are a form of the computationally intractable multi-depot traveling salesman problem (MDTSP). We propose a novel market-based approach, called market-based approach with look-ahead agents (MALA), to address the problem. In MALA, agents use look ahead to optimize their behavior. Each agent plans a preferred, reward-maximizing tour for itself using our proposed algorithm which is based on the universal TSP algorithm. The agent then uses the preferred tour to evaluate potential trades with other agents in linear time - a necessary prerequisite for scalability of market-based approach. We use simulations in a two dimensional world to study the performance of MALA and compare it with O-contracts and TraderBots, respectively, a centralized approach and a distributed approach. Experiments suggest that MALA efficiently scales to thousands of tasks and hundreds of agents in terms of both computation and communication complexity, while delivering relatively good-quality but approximate solutions.
Keywords :
multi-agent systems; O-contracts; TraderBots; computationally intractable multi-depot traveling salesman problem; look-ahead agents; market-based approach; mine sweeping; multi-agent systems; multi-agent task reallocation; search-and-rescue missions; Computational modeling; Costs; Fuels; Monitoring; Multiagent systems; Robot sensing systems; Strain measurement; Surveillance; Traveling salesman problems; Vibration measurement;
Conference_Titel :
Self-Adaptive and Self-Organizing Systems, 2007. SASO '07. First International Conference on
Conference_Location :
Cambridge, MA
Print_ISBN :
0-7695-2906-2
DOI :
10.1109/SASO.2007.41