Sciweavers

KES
2005
Springer

Towards Adaptive Clustering in Self-monitoring Multi-agent Networks

13 years 10 months ago
Towards Adaptive Clustering in Self-monitoring Multi-agent Networks
A Decentralised Adaptive Clustering (DAC) algorithm for self-monitoring impact sensing networks is presented within the context of CSIRO-NASA Ageless Aerospace Vehicle project. DAC algorithm is contrasted with a Fixed-order Centralised Adaptive Clustering (FCAC) algorithm, developed to evaluate the comparative performance. A number of simulation experiments is described, with a focus on the scalability and convergence rate of the clustering algorithm. Results show that DAC algorithm scales well with increasing network and data sizes and is robust to dynamics of the sensor-data flux.
Piraveenan Mahendra rajah, Mikhail Prokopenko, Pet
Added 28 Jun 2010
Updated 28 Jun 2010
Type Conference
Year 2005
Where KES
Authors Piraveenan Mahendra rajah, Mikhail Prokopenko, Peter Wang, Don Price
Comments (0)