LGAIFeb 5, 2025

Neural Network-based Vehicular Channel Estimation Performance: Effect of Noise in the Training Set

arXiv:2502.06824v12 citationsh-index: 3
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This work addresses channel estimation challenges in vehicular communication systems, offering an incremental improvement by optimizing training data SNR ranges for neural network models.

This study investigated the impact of training neural network-based channel estimators on mixed signal-to-noise ratio (SNR) datasets versus high SNR datasets for vehicular communications, finding that using only high SNR data is not always optimal and that adjusting the SNR range in training can improve performance, with some models showing better results in low SNR conditions when trained on mixed data.

Vehicular communication systems face significant challenges due to high mobility and rapidly changing environments, which affect the channel over which the signals travel. To address these challenges, neural network (NN)-based channel estimation methods have been suggested. These methods are primarily trained on high signal-to-noise ratio (SNR) with the assumption that training a NN in less noisy conditions can result in good generalisation. This study examines the effectiveness of training NN-based channel estimators on mixed SNR datasets compared to training solely on high SNR datasets, as seen in several related works. Estimators evaluated in this work include an architecture that uses convolutional layers and self-attention mechanisms; a method that employs temporal convolutional networks and data pilot-aided estimation; two methods that combine classical methods with multilayer perceptrons; and the current state-of-the-art model that combines Long-Short-Term Memory networks with data pilot-aided and temporal averaging methods as post processing. Our results indicate that using only high SNR data for training is not always optimal, and the SNR range in the training dataset should be treated as a hyperparameter that can be adjusted for better performance. This is illustrated by the better performance of some models in low SNR conditions when trained on the mixed SNR dataset, as opposed to when trained exclusively on high SNR data.

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