Fault detection for large scale indoor distributed antenna system based on time series similarity

Yingqi Wang, Shengwei Meng, Yuchen Song, Datong Liu
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引用次数: 2

Abstract

With the advancement of the fifth-generation (5G) mobile communication networks, the number of subscribers in the interior environment continues to grow. The large-scale indoor distributed antenna system (DAS) is one of the critical approaches for bringing macro base station signals indoors. As the DAS becomes larger and the composition becomes more and more complex, the probability of system failure gradually increases. Therefore, it is very important to detect the failure of the DAS. Through actual research, limited by the user’s usage pattern, distribution, and regional functions, the daily power slave data of the room distribution system has a certain periodicity and similarity, but when a fault occurs, it will break this rule, and then be detected. However, the similarity and periodicity of the data are also affected by the randomness of users, which brings difficulties to fault detection. This paper will use the fault detection method based on N-dimensional Euclidean distance to mine the anomalies in the DAS detection data, and then carry out fault detection. To solve the influence of user randomness on the detection results, this paper will introduce a sliding window and a selection window. Although the filtering reduces the timeliness, it greatly reduces the false alarm rate. Finally, the simulation data and real data at DAS will be used to verify the method proposed in this paper.
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基于时间序列相似性的大型室内分布式天线系统故障检测
随着第五代(5G)移动通信网络的发展,室内环境的用户数量持续增长。大型室内分布式天线系统(DAS)是将宏基站信号引入室内的重要途径之一。随着DAS越来越大,组成越来越复杂,系统失效的概率也逐渐增加。因此,检测DAS的故障是非常重要的。通过实际研究,受用户使用方式、分布、区域功能的限制,机房配电系统的日从电量数据具有一定的周期性和相似性,但当发生故障时,就会打破这一规律,进而被检测出来。然而,数据的相似性和周期性也会受到用户随机性的影响,给故障检测带来困难。本文将采用基于n维欧氏距离的故障检测方法,挖掘DAS检测数据中的异常,然后进行故障检测。为了解决用户随机性对检测结果的影响,本文将引入滑动窗口和选择窗口。虽然过滤降低了时效性,但大大降低了虚警率。最后,将利用DAS的仿真数据和实际数据对本文提出的方法进行验证。
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