A Multivariate Time-Series Based Approach for Quality Modeling in Wireless Networks.
Leonardo AguayoSergio FortesCarlos BaenaEduardo BaenaRaquel BarcoPublished in: Sensors (Basel, Switzerland) (2021)
This work presents a method for estimating key quality indicators (KQIs) from measurements gathered at the nodes of a wireless network. The procedure employs multivariate adaptive filtering and a clustering algorithm to produce a KQI time-series suitable for post-processing by the network management system. The framework design, aimed to be applied to 5G and 6G systems, can cope with a nonstationary environment, allow fast and online training, and provide flexibility for its implementation. The concept's feasibility was evaluated using measurements collected from a live heterogeneous network, and initial results were compared to other linear regression techniques. Suggestions for modifications in the algorithms are also described, as well as directions for future research.