标题: 于LTE-A网路中基于机器学习之自我错误诊断及修复
Machine Learning Based Self-Fault-Diagnosis and Self-Healing in LTE-A Network
作者: 汪楷程
李大嵩
Wang, Kai-Cheng
Lee, Ta-Sung
电信工程研究所
关键字: LTE-A网路;错误诊断;关键绩效指标;支持限量机;类神经网路;预处理;LTE-A Network;Fault-Diagnosis;Key Performance Indicators;Support Vector Machine;Neural Network;Preprocessing
公开日期: 2017
摘要: 随着商用无线行动网路的复杂度及服务的使用者数增加,电信供应商及服务商如何维护基地台和维持一定的服务品质将成为一大挑战。因此,3GPP在LTE标准中引入自我组织网路的概念。自我组织网路即为基地台根据收到使用者的一些参数去做自我配置、自我优化及自我修复,以达到减少资本支出及营运费用。于本论文中,吾人提出在LTE-A中使用监督式机器学习及类神经网路演算法去做单一问题判别,此方法利用基地台收集到个别不同的网路状况所产生的性能指标参数经过吾人设计的通用预处理演算法后,馈入机器学习及类神经演算法训练,使得基地台拥有单一问题判别能力。此外,考虑多问题同时发生的情况,吾人提出结合吾人设计的预处理演算法、多标签机器学习演算法及类神经演算法达到多问题同时发生及问题严重程度的诊断。最后,由分析和电脑模拟结果显示,吾人提出的演算法能够提高判断的精准度,以达到基地台自我修复的功能。
Recently, mobile networks have been designed with more complexity of infrastructure and higher diversity of associated devices and resources, as well as dynamical formations of networks due to demand of user and development of the mobile industry. Therefore, the infrastructure of the mobile system is hard to be maintained, and cost of maintenance is going to increase. In many works, algorithms for automatic configuration, optimization and fault healing have been proposed to solve these problems mentioned above. In this thesis, self-healing is focused. First, we propose a method that uses supervised machine learning and neural network algorithms to discriminate single-labeled and level of severity for anomalies. Afterward, a method for identifying single-labeled and multi-labeled anomalies is proposed. These methods utilize key performance indicators (KPIs) of different network conditions, which base stations collect and use for preprocessing. Subsequently, the data, which is passed through preprocessing, is used as an information source for machine learning through the neural network, given that base stations have the ability to discriminate single-labeled and multi-labeled anomalies. In the final analysis, computer simulation results show that our proposed algorithms can enhance the accuracy of anomaly discrimination such that base stations are able to self-heal.
URI: http://etd.lib.nctu.edu.tw/cdrfb3/record/nctu/#GT070460241
http://hdl.handle.net/11536/141541
显示于类别:Thesis