Author
Listed:
- ALEJANDRO RODRÍGUEZ
(Department of Computer Science, University of Maryland, College Park, Maryland 20740, USA)
- ALEXANDER GRUSHIN
(Department of Computer Science, University of Maryland, College Park, Maryland 20740, USA)
- JAMES A. REGGIA
(Department of Computer Science, University of Maryland, College Park, Maryland 20740, USA;
University of Maryland Institute for Advanced Computer Studies, College Park, Maryland 20740, USA)
Abstract
Drawing inspiration from social interactions in nature, the field of swarm intelligence has presented a promising approach to the design of complex systems consisting of numerous, usually homogeneous, simple parts, to solve a wide variety of problems. Like cellular automata, swarm-intelligence systems involve highly parallel computations across space, based heavily on self-organization, the emergence of global behavior through local interactions of components, and the absence of centralized or global control. However, this has a disadvantage as the desired behavior of a system becomes hard to predict or design based on its local interaction rules. In our ongoing research, we propose to provide greater control over a system, and potentially more useful, goal-oriented behavior, by introducing layered, hierarchical controllers in the particles or components. The layered controllers allow each particle to extend their reactive behavior in a more goal-oriented style, while keeping the locality of the interactions and the general simplicity of the system. In this paper, we present three systems designed using this approach: a competitive foraging system, a system for the collective transport and distribution of goods, and a self-assembly system capable of creating complex structures in a 3D world. Our simulation results show that in all three cases it was possible to guide the self-organization process at different levels of the designated task, suggesting that the self-organizing behavior of swarm-intelligence systems may be extendable to support problem solving in various contexts, such as coordinated robotic teams.
Suggested Citation
Alejandro Rodríguez & Alexander Grushin & James A. Reggia, 2007.
"Swarm Intelligence Systems Using Guided Self-Organization For Collective Problem Solving,"
Advances in Complex Systems (ACS), World Scientific Publishing Co. Pte. Ltd., vol. 10(supp0), pages 5-34.
Handle:
RePEc:wsi:acsxxx:v:10:y:2007:i:supp0:n:s0219525907001069
DOI: 10.1142/S0219525907001069
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