摘要
In order to achieve an intelligent and automated self-management network,dynamic policy configuration and selection are needed.A certain policy only suits to a certain network environment.If the network environment changes,the certain policy does not suit any more.Thereby,the policy-based management should also have similar "natural selection" process.Useful policy will be retained,and policies which have lost their effectiveness are eliminated.A policy optimization method based on evolutionary learning was proposed.For different shooting times,the priority of policy with high shooting times is improved,while policy with a low rate has lower priority,and long-term no shooting policy will be dormant.Thus the strategy for the survival of the fittest is realized,and the degree of self-learning in policy management is improved.
In order to achieve an intelligent and automated self-management network, dynamic policy configuration and selection are needed. A certain policy only suits to a certain network environment. If the network environment changes, the certain policy does not suit any more. Thereby, the policy-based management should also have similar "natural selection" process. Useful policy will be retained, and policies which have lost their effectiveness are eliminated. A policy optimization method based on evolutionary learning was proposed. For different shooting times, the priority of policy with high shooting times is improved, while policy with a low rate has lower priority, and long-term no shooting policy will be dormant. Thus the strategy for the survival of the fittest is realized, and the degree of self-learning in policy management is improved.
基金
National Natural Science Foundation of China(No.60534020)
Cultivation Fund of the Key Scientific and Technical Innovation Project from Ministry of Education of China(No.706024)
International Science Cooperation Foundation of Shanghai,China(No.061307041)