Abstract:
We propose to utilize a variational autoencoder (VAE) for data-driven channel estimation. The underlying true and unknown channel distribution is modeled by the VAE as a ...Show MoreMetadata
Abstract:
We propose to utilize a variational autoencoder (VAE) for data-driven channel estimation. The underlying true and unknown channel distribution is modeled by the VAE as a conditional Gaussian distribution in a novel way, parameterized by the respective first and second order conditional moments. As a result, it can be observed that the linear minimum mean square error (LMMSE) estimator in its variant conditioned on the latent sample of the VAE approximates an optimal MSE estimator. Furthermore, we argue how a VAE-based channel estimator can approximate the MMSE channel estimator. We propose three variants of VAE estimators that differ in the data used during training and estimation. First, we show that given perfectly known channel state information at the input of the VAE during estimation, which is impractical, we obtain an estimator that can serve as a benchmark result for an estimation scenario. We then propose practically feasible approaches, where perfectly known channel state information is only necessary in the training phase or is not needed at all. Simulation results on 3GPP and QuaDRiGa channel data attest a small performance loss of the practical approaches and the superiority of our VAE approaches in comparison to other related channel estimation methods.
Date of Conference: 31 October 2022 - 02 November 2022
Date Added to IEEE Xplore: 07 March 2023
ISBN Information:
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- IEEE Keywords
- Index Terms
- Channel Estimation ,
- Variational Autoencoder ,
- MMSE Channel Estimation ,
- Mean Square Error ,
- Training Phase ,
- Channel State ,
- Optimal Estimation ,
- Channel Data ,
- Minimum Mean Square Error ,
- Minimum Mean Square ,
- Minimum Mean Square Error Estimator ,
- Channel Estimation Methods ,
- Neural Network ,
- Model System ,
- Latent Variables ,
- Conditional Mean ,
- Channel Model ,
- Gaussian Mixture Model ,
- Discrete Fourier Transform ,
- Latent Representation ,
- Evidence Lower Bound ,
- Noisy Observations ,
- Diagonal Covariance ,
- Circulant Matrix ,
- Angle Of Arrival ,
- Decoder Output ,
- Normalized Mean Square Error ,
- Path Gain ,
- SNR Values ,
- Conditional Covariance
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Channel Estimation ,
- Variational Autoencoder ,
- MMSE Channel Estimation ,
- Mean Square Error ,
- Training Phase ,
- Channel State ,
- Optimal Estimation ,
- Channel Data ,
- Minimum Mean Square Error ,
- Minimum Mean Square ,
- Minimum Mean Square Error Estimator ,
- Channel Estimation Methods ,
- Neural Network ,
- Model System ,
- Latent Variables ,
- Conditional Mean ,
- Channel Model ,
- Gaussian Mixture Model ,
- Discrete Fourier Transform ,
- Latent Representation ,
- Evidence Lower Bound ,
- Noisy Observations ,
- Diagonal Covariance ,
- Circulant Matrix ,
- Angle Of Arrival ,
- Decoder Output ,
- Normalized Mean Square Error ,
- Path Gain ,
- SNR Values ,
- Conditional Covariance
- Author Keywords