Recognition of Low-Dimensional Patterns in Radio Access Network Data

2009 
In this work, we aim at finding the low dimensional hidden structures or manifolds that exist in the high dimensional data produced by a Radio Access Network (RAN). Specifically, we consider the Key Performance Indicators (KPIs) of a UMTS network. The KPI data is obtained by performing semi-dynamic simulations of a Radio Network Planning (RNP) tool. The low-dimensional manifold, yielding a meaningful and tractable representation of the performance indicators, facilitates the complicated tasks like monitoring, troubleshooting, fault detection, design, radio resource management etc. We have applied one second-order linear (PCA), one high-order linear (ICA) and one nonlinear technique (ISOMAP) of manifold learning and compared the results.
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