基于层次特征的时间序列聚类方法在蜂窝网络数据驱动容量规划中的应用

Vineeta Jain;Anna Richter;Vladimir Fokow;Mathias Schweigel;Ulf Wetzker;Andreas Frotzscher
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引用次数: 0

摘要

蜂窝网络在用户中越来越受欢迎,主要是由于价格实惠和高速,这使得对战略容量规划的需求升级,以确保无缝的最终用户体验和网络投资的盈利回报。传统的容量规划方法依赖于对网络参数的静态分析,以最小化CAPEX和OPEX为目标。然而,为了解决蜂窝网络不断变化的动态,本文提倡一种数据驱动的方法,在规划过程中考虑用户行为分析,使其具有前瞻性和适应性。我们介绍了一种基于层次特征的时间序列聚类(HFTSC)方法,该方法将聚类组织成多层次树结构。每个级别使用重点特征处理时间序列数据的特定方面,从而实现可解释的聚类。该方法根据每个层次的时间序列属性为聚类分配标签,在应用无监督聚类方法的同时生成带注释的聚类。为了评估HFTSC的有效性,我们使用来自数千个网络元素的真实数据进行了全面的案例研究。我们的评估从分析和地理角度考察了已确定的集群,重点是支持网络规划者在数据知情的决策和分析中。最后,我们与几种基线方法进行了广泛的比较,以反映我们的方法在容量规划和优化方面的实际优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hierarchical Feature-Based Time Series Clustering Approach for Data-Driven Capacity Planning of Cellular Networks
The growing popularity of cellular networks among users, primarily due to affordable prices and high speeds, has escalated the need for strategic capacity planning to ensure a seamless end-user experience and profitable returns on network investments. Traditional capacity planning methods rely on static analysis of network parameters with the aim of minimizing the CAPEX and the OPEX. However, to address the evolving dynamics of cellular networks, this paper advocates for a data-driven approach that considers user behavioral analysis in the planning process to make it proactive and adaptive. We introduce a Hierarchical Feature-based Time Series Clustering (HFTSC) approach that organizes clustering in a multi-level tree structure. Each level addresses a specific aspect of time series data using focused features, enabling explainable clustering. The proposed approach assigns labels to clusters based on the time series properties targeted at each level, generating annotated clusters while applying unsupervised clustering methods. To evaluate the effectiveness of HFTSC, we conduct a comprehensive case study using real-world data from thousands of network elements. Our evaluation examines the identified clusters from analytical and geographical perspectives, focusing on supporting network planners in data-informed decision-making and analysis. Finally, we perform an extensive comparison with several baseline methods to reflect the practical advantages of our approach in capacity planning and optimization.
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