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Bibliographic Details
Main Authors: Kothari, Hiten Prakash, Buehrer, R. Michael
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.13533
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author Kothari, Hiten Prakash
Buehrer, R. Michael
author_facet Kothari, Hiten Prakash
Buehrer, R. Michael
contents Building on the previous work on interference mitigation, this paper introduces a modular recommender system that automatically selects the most effective interference mitigation strategy based on the interference characteristics present in the received signal. The system integrates three key stages: an SPS classifier module, a SIR predictor, and a bank of specialized U-Net autoencoders designed for different interference conditions. The classification block identifies the parameters required for cancellation. The recommender then directs the signal to the appropriate mitigation model, optionally incorporating SIR-based decisions for scenarios where successive interference cancellation may be advantageous. Experiments conducted across diverse SIR levels and modulation environments show that the recommender strategy improves robustness and reduces BER compared to using any single mitigation method alone. The results demonstrate the potential of adaptive, model-selective architectures to enhance interference resilience in dynamic communication environments.
format Preprint
id arxiv_https___arxiv_org_abs_2512_13533
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Interference Mitigation Recommender System using U-Net Autoencoders
Kothari, Hiten Prakash
Buehrer, R. Michael
Signal Processing
Building on the previous work on interference mitigation, this paper introduces a modular recommender system that automatically selects the most effective interference mitigation strategy based on the interference characteristics present in the received signal. The system integrates three key stages: an SPS classifier module, a SIR predictor, and a bank of specialized U-Net autoencoders designed for different interference conditions. The classification block identifies the parameters required for cancellation. The recommender then directs the signal to the appropriate mitigation model, optionally incorporating SIR-based decisions for scenarios where successive interference cancellation may be advantageous. Experiments conducted across diverse SIR levels and modulation environments show that the recommender strategy improves robustness and reduces BER compared to using any single mitigation method alone. The results demonstrate the potential of adaptive, model-selective architectures to enhance interference resilience in dynamic communication environments.
title Interference Mitigation Recommender System using U-Net Autoencoders
topic Signal Processing
url https://arxiv.org/abs/2512.13533