LTE网络测量报告的快速处理方法

Jian Wu, Ning Yu, Bo Zhou, Yuwen Duan
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引用次数: 0

摘要

测量报告(MR)是由用户设备和ENODEB生成的文件,它表明信道质量,对LTE网络优化很重要。然而,要快速方便地处理MR文件进行算法研究是很困难的。针对MR文件的特殊结构,本文提出并比较了三种基于c#的MR解析方法,并通过实例阐述了不同工作场景下MR解析的具体操作。结果表明,使用这些方法可以大大加快网络优化算法的验证工作,对全省乃至全国的大规模优化工作具有指导意义。
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Rapid Processing Methods of Measurement Reports in LTE Network
Measurement reports (MR) are files generated by User Equipment and ENODEB which indicate the channel quality and are important for LTE network optimization. However, it is hard to process MR files for algorithm studies quickly and easily. Based on the special structure of MR files, this paper presents and compares three MR parsing methods based on C# and expatiates detailed operations by giving examples in different working scenes. The result shows that using these methods can greatly speed up the verification work of network optimization algorithm and has a guiding significance for large-scale optimization job for one province or even for the whole country.
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