Title of article :
Self-Configuration of Network Services with
Biologically Inspired Learning and Adaptation
Author/Authors :
Frank Chiang، نويسنده , , 1، نويسنده , , 2 Robin Braun، نويسنده , , 1 and Johnson I. Agbinya1، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
This paper proposes a self-organizing scheme based on ant metaheuristics to optimize
the operation of multiple classes of managed elements on an Operations Support
Systems (OSSs) for mobile pervasive communications. Ant metaheuristics are characterized
by learning and adaptation capabilities against dynamic environment changes
and uncertainties. As an important division of swarm agent intelligence, it distinguishes
itself from centralized management schemes due to its features of robustness and
scalability.We have successfully applied ant metaheuristics to the network service configuration
process, which is simply redefined as: the managed elements represented as
graphic nodes, and ants traverse by selecting nodes with the minimum cost constraints
until the eligible network elements are located along near-optimal paths—the located
elements are those needed for the configuration or activation of a particular product
and service. Although the configuration process is non-transparent to end users, the
negotiated SLAs between users and providers affect the overall process. This proposed
self-organized learning and adaptation scheme using Ant Colony Optimization (ACO)
is evaluated by simulation in Java. A performance comparison is also made with a
class of Genetic Algorithm known as PBIL. Finally, the simulation results show the
scalability and robustness capability of autonomous ant-like agents able to adapt to
dynamic networks
Keywords :
Ant Colony Optimization (ACO) , Genetic algorithm (GA) , operationssupport systems (OSSs) , quality of service (QoS) , pervasive computing environment(PCE) , autonomic.
Journal title :
Journal of Network and Systems Management
Journal title :
Journal of Network and Systems Management