Abstract

Hardware accelerated modules that can continuously measure/analyze resource (frequency channels, power, etc.) utilization in real-time can help in achieving efficient network control, and configuration in cloud managed wireless networks. As utilization of various network resources over time often exhibits broad and skewed distribution, estimating quantiles of metrics to characterize their distribution is more useful than typical approaches that tend to focus on measuring average values only. In this paper, we describe the development of a real-time quantile-based resource utilization estimator module for wireless networks. The intensive processing tasks run on the FPGA, while the command and control runs on an embedded ARM processor. The module is implemented by using high level synthesis (HLS) on a Xilinx's Zynq-7000 series all programmable system on chip board. We test the performance of the implemented quantile estimator module, and as an example, we focus on forecasting congestion with real frequency channel utilization data. We compare the results from the implemented module against the results from a theoretical quantile estimator. We show that with high accuracy and in real time, the implemented module can perform quantile estimation and can be utilized to perform forecasting of congestion in wireless frequency spectrum utilization.

Highlights

  • A wide range of ultra-reliable and low latency communication (URLLC) applications, such as autonomous driving, robotics and industrial automation [1], require modules that can perform real-time analytics of key metrics relating to resource utilization in the network

  • ZedBoard was connected to a computer with MATLAB and the results were obtained by sending channel utilization (CU) data to the ZedBoard and reading back the computed output from ZedBoard and comparing with MATLAB extreme value theory quantile estimates

  • Recently, it has been recognized that real-time data analytics play an important role in achieving efficient network control, configuration and management

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Summary

INTRODUCTION

A wide range of ultra-reliable and low latency communication (URLLC) applications, such as autonomous driving, robotics and industrial automation [1], require modules that can perform real-time analytics of key metrics relating to resource utilization in the network. Our implemented solution can be used for estimating quantiles in real time of streaming data samples exhibiting different distributions, such as normal, Pareto, and generalized extreme value distribution. We test the performance of the implemented quantile estimator module with extreme value distribution for maxima wireless CU data collected over an unlicensed band in the University of Oulu. The author of [24] presents a histogram based probability density function estimation using FPGAs. Cumulative distribution function is computed in real time for the input data and important information like centiles which are used in quality of service oriented decisions in communication systems, are calculated from the probability density function. The number of samples in time t depends on the duration of the interval t and sampling frequency which would range from hundred of thousands to few millions

EXTREME VALUE THEORY
10: Output
RESULTS AND DISCUSSION
CONCLUSION
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