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Self Organizing Networks Coordination Function between Intercell Interference Coordination and Coverage and Capacity Optimisation using Support Vector Machine

机译:小区间干扰协调与覆盖之间的自组织网络协调功能及支持向量机的容量优化

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It is expected that by 2020, billions of devices connect to internet using 5G cellular network. To provide seamless connectivity, as well as Quality of Experience and automate network functionalities like configuration, optimization and healing, Self Organized Networks (SON) have come into existence. In state of the art technology, this makes use of Machine Learning (ML) to overcome manual intervention and take appropriate decisions in given time. As there are multiple SON functions, there is a necessity of co-ordination among the functions to avoid conflicts. While detection of conflicts i.e., more than one function trying to modify the same parameter can be done using ML algorithms like anomaly detection, resolution of conflicts is implemented based on SON functions. One such problem is resolution of conflict between Inter Cell Interference Coordination (ICIC) and Coverage and Capacity Optimization (CCO). This is done by using Support Vector Machine (SVM) for generation of optimal antenna parameters using radial basis kernel and results are validated using LTE simulator ns3 LENA. From the dataset used for training and testing, which is validated using ns3, it is found that SVM is suitable algorithm for predicting antenna parameters in case of conflict between ICIC and CCO. Since SVM not only predicts multiple labels but also considers inter-relationship between the features it can be considered as most suitable algorithm for handling conflict between SON functions.
机译:预计到2020年,数十亿设备将使用5G蜂窝网络连接到互联网。为了提供无缝的连接以及体验质量,并实现诸如配置,优化和修复之类的自动化网络功能,自组织网络(SON)已经存在。在最先进的技术中,这利用了机器学习(ML)来克服手动干预并在给定的时间内做出适当的决定。由于存在多个SON功能,因此有必要在各个功能之间进行协调以避免冲突。虽然可以使用像异常检测这样的ML算法来完成冲突的检测,即尝试修改同一参数的多个功能,但是基于SON功能实现了冲突的解决。这样的问题之一是解决小区间干扰协调(ICIC)与覆盖和容量优化(CCO)之间的冲突。通过使用支持向量机(SVM)使用径向基础内核生成最佳天线参数来完成此操作,并使用LTE模拟器ns3 LENA对结果进行验证。从用于训练和测试的数据集(已使用ns3验证),发现SVM是在ICIC和CCO之间发生冲突的情况下预测天线参数的合适算法。由于SVM不仅可以预测多个标签,而且可以考虑特征之间的相互关系,因此可以将其视为处理SON函数之间冲突的最合适算法。

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