Phase Shift Beamformer for Millimeter Wave Hybrid Receiving

Authors

  • Konduri Prasanna Lakshmi  Department of Electronics and Communication Engineering, Siddartha Educational Academy Group of Institutions, Tirupati, India
  • Dr. K Purushotham Prasad  Department of Electronics and Communication Engineering, Siddartha Educational Academy Group of Institutions, Tirupati, India

Keywords:

Millimeter-wave (mm-wave), wideband, beam squint, orthogonal frequency division multiplexing (OFDM), hybrid.

Abstract

This study looks at millimeter-wave orthogonal frequency division multiplexing's uplink transmission using a wide bandwidth and hybrid receiving. Analysis of the spectral efficiency of the system is made possible by the channel model's treatment of the spatial- and frequency-wideband effects. The beam squint effect brought on by wideband effects is demonstrated by the study and simulation results. The phase shift beamforming method aids in reducing this impact. The results suggest that the technique produces better results when compared to base results.

References

  1. X. Zhang, R. Xue, B. Liu, W. Lu, and Y. Zhang, "Grade prediction of student academic performance with multiple classification models,".
  2. S. T. Jishan, R. I. Rashu, N. Haque, and R. M. Rahman, "Improving accuracy of students’ final grade prediction model using optimal equal width binning and synthetic minority over-sampling technique,"
  3. A. Polyzou and G. Karypis, "Grade prediction with models specific to students and courses,"
  4. Z. Iqbal, J. Qadir, A. N. Mian, and F. Kamiran, "Machine learning based student grade prediction
  5. I. Khan, A. Al Sadiri, A. R. Ahmad, and N. Jabeur, "Tracking student performance in introductory programming by Means of machine learning,"
  6. M. A. Al-Barrak and M. Al-Razgan, "Predicting students final GPA using decision trees:
  7. E. C. Abana, "A decision tree approach for predicting student grades in research project using WEKA,
  8. F. Ahmad, N. H. Ismail, and A. A. Aziz, "The prediction of students’ academic performance using classification data mining techniques,"
  9. T. Anderson and R. Anderson, "Applications of machine learning to student grade prediction in quantitative business courses,"
  10. S. Hussain, N. A. Dahan, F. M. Ba-Alwib, and N. Ribata, "Educational data mining and analysis of students’ academic performance using WEKA,"
  11. A. Verma, "Evaluation of classification algorithms with solutions to class imbalance problem on bank marketing dataset using WEKA,
  12. D. Berrar, "Cross-validation," Comput. Biol.,
  13. M. Hussain, W. Zhu, W. Zhang, S. M. R. Abidi, and S. Ali, "Using machine learning to predict student difficulties from learning session data,
  14. B. Predić, G. Dimić, D. Ranćić, P. Štrbac, N. Maček, and P. Spalević, "Improving final grade prediction accuracy in blended learning environment using voting ensembles"

Downloads

Published

2022-12-30

Issue

Section

Research Articles

How to Cite

[1]
Konduri Prasanna Lakshmi, Dr. K Purushotham Prasad, " Phase Shift Beamformer for Millimeter Wave Hybrid Receiving, International Journal of Scientific Research in Science and Technology(IJSRST), Online ISSN : 2395-602X, Print ISSN : 2395-6011, Volume 9, Issue 6, pp.94-99, November-December-2022.