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TOWARDS COGNITIVE AUTONOMOUS NETWORKS IN 5G

机译:建立5G认知自治网络

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Cell densification and addition of new Radio Access Technologies have been the solutions of choice for improving area-spectral efficiency to serve the ever-growing traffic demand. Both solutions, however, increase the cost and complexity of network operations for which the agreed solution is increased automation. Cognitive Autonomous Networks (CAN) will therefore use Artificial Intelligence and Machine Learning (ML) to maximize the value of automation. This paper develops the models for cognitive automation and proposes a CAN design that addresses the requirements for 5G and future networks. We then illustrate the benefit of this approach by evaluating ML models that learn a network's response to different mobility states and configurations.
机译:小区致密化和添加新的无线接入技术已成为提高区域频谱效率以满足不断增长的流量需求的首选解决方案。但是,这两种解决方案都增加了网络运营的成本和复杂性,为此,商定的解决方案就是提高自动化程度。因此,认知自治网络(CAN)将使用人工智能和机器学习(ML)来最大化自动化的价值。本文开发了认知自动化模型,并提出了一种可满足5G和未来网络需求的CAN设计。然后,我们通过评估学习网络对不同移动性状态和配置的响应的ML模型来说明此方法的好处。

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