NIAISep 29, 2022

A canonical correlation-based framework for performance analysis of radio access networks

arXiv:2209.14684v11 citationsh-index: 26
Originality Synthesis-oriented
AI Analysis

This work addresses performance diagnostics for cellular network operators, but it is incremental as it applies an existing statistical method to a new domain.

The paper tackled the challenge of analyzing complex spatio-temporal relationships in radio access networks by proposing a canonical correlation analysis (CCA) framework, which was applied to an energy-saving case study on LTE networks to identify key relationships between network data.

Data driven optimization and machine learning based performance diagnostics of radio access networks entails significant challenges arising not only from the nature of underlying data sources but also due to complex spatio-temporal relationships and interdependencies between cells due to user mobility and varying traffic patterns. We discuss how to study these configuration and performance management data sets and identify relationships between cells in terms of key performance indicators using multivariate analysis. To this end, we leverage a novel framework based on canonical correlation analysis (CCA), which is a highly effective method for not only dimensionality reduction but also for analyzing relationships across different sets of multivariate data. As a case study, we discuss energy saving use-case based on cell shutdown in commercial cellular networks, where we apply CCA to analyze the impact of capacity cell shutdown on the KPIs of coverage cell in the same sector. Data from LTE Network is used to analyzed example case. We conclude that CCA is a viable approach for identifying key relationships not only between network planning and configuration data, but also dynamic performance data, paving the way for endeavors such as dimensionality reduction, performance analysis, and root cause analysis for performance diagnostics.

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