the network will usher in new application scenarios and new performance requirements.Diversified application and communication scenarios
extremely heterogeneous communication networks
and extreme performance service requirements will all put forward higher requirements for mobile communication networks.On the basis of summarizing network intelligence in 5G and 5G-Advanced networks
the definition of intelligent-endogenesisin 6G networks and four major characteristics of 6G network architecture for intelligent-endogenesis were proposed
and the potential key technologies of intelligent-endogenesisin 6G network was analyzed
and finally combined with two application scenarios to further explore the concept of network architecture for intelligent-endogenesis.
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references
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