Machine Learning-Based Performance Approximation in the Uplink Random Access Network 


Vol. 46,  No. 7, pp. 1160-1163, Jul.  2021
10.7840/kics.2021.46.7.1160


PDF
  Abstract

The stochastic geometry-based analysis is possible to understand the effect of operating variables on network performance. But it is possible in a limited environment. Thus, this paper proposed a method that applies stochastic geometry-based machine learning to uplink performance approximation. The proposed method can approximate the effect of the power control variable on the uplink performance. In addition, the proposed method can apply to other network environments.

  Statistics
Cumulative Counts from November, 2022
Multiple requests among the same browser session are counted as one view. If you mouse over a chart, the values of data points will be shown.


  Cite this article

[IEEE Style]

C. Xuan, "Machine Learning-Based Performance Approximation in the Uplink Random Access Network," The Journal of Korean Institute of Communications and Information Sciences, vol. 46, no. 7, pp. 1160-1163, 2021. DOI: 10.7840/kics.2021.46.7.1160.

[ACM Style]

Can-shou Xuan. 2021. Machine Learning-Based Performance Approximation in the Uplink Random Access Network. The Journal of Korean Institute of Communications and Information Sciences, 46, 7, (2021), 1160-1163. DOI: 10.7840/kics.2021.46.7.1160.

[KICS Style]

Can-shou Xuan, "Machine Learning-Based Performance Approximation in the Uplink Random Access Network," The Journal of Korean Institute of Communications and Information Sciences, vol. 46, no. 7, pp. 1160-1163, 7. 2021. (https://doi.org/10.7840/kics.2021.46.7.1160)