Repository logo
Communities & Collections
All of DSpace
  • English
  • العربية
  • বাংলা
  • Català
  • Čeština
  • Deutsch
  • Ελληνικά
  • Español
  • Suomi
  • Français
  • Gàidhlig
  • हिंदी
  • Magyar
  • Italiano
  • Қазақ
  • Latviešu
  • Nederlands
  • Polski
  • Português
  • Português do Brasil
  • Srpski (lat)
  • Српски
  • Svenska
  • Türkçe
  • Yкраї́нська
  • Tiếng Việt
Log In
New user? Click here to register. Have you forgotten your password?
  1. Home
  2. Browse by Author

Browsing by Author "Reino Criollo, Ruth Alexandra"

Filter results by typing the first few letters
Now showing 1 - 1 of 1
  • Results Per Page
  • Sort Options
  • Loading...
    Thumbnail Image
    Item
    Modulación adaptativa para un sistema OFDM, utilizando técnicas de Machine Learning
    (Universidad de Cuenca, 2024-08-30) Maguana Zhindón, July Katherine; Reino Criollo, Ruth Alexandra; Solano Quinde, Lizandro Damián
    Adaptive Orthogonal frequency division multiplexing (OFDM) is a modulation scheme that dy- namically adjusts the system’s modulation based on real-time channel conditions, optimizing bandwidth usage and maintaining an optimal Bit Error Rate (BER). This integrative curricular work analyzes the BER of a conventional adaptive OFDM system and one enhanced with Machine Learning (ML) techniques. To implement adaptive OFDM with ML, a training database is generated by analyzing performance in terms of BER and Signal to Noise Ratio (SNR) for five modulation schemes [QPS, 8-PSK, 16-QAM, 32-QAM, 64-QAM], establishing the boundaries and parameters. Three models are trained: decision tree, k-nearest neighbors (classification technique), and robust linear regression (regression technique). The performance of each mo-del is compared based on BER and throughput. The results show that ML techniques improve the performance of the adaptive OFDM system, enabling precise modulation scheme selection and efficient adaptation to channel conditions. The adaptive OFDM system with ML can switch modulation, achieving high throughput and a BER lower than 0.001 with an SNR of 17 dB or higher. Among supervised ML techniques, classification models like decision tree and k-nearest neighbors outperform linear regression in prediction accuracy, achieving a lower BER with a lower SNR and high throughput.

DSpace software copyright © 2002-2025 LYRASIS

  • Privacy policy
  • End User Agreement
  • Send Feedback