Predicting Multi-Antenna Frequency-Selective Channels via Meta-Learned
Linear Filters based on Long-Short Term Channel Decomposition
- URL: http://arxiv.org/abs/2203.12715v1
- Date: Wed, 23 Mar 2022 20:38:48 GMT
- Title: Predicting Multi-Antenna Frequency-Selective Channels via Meta-Learned
Linear Filters based on Long-Short Term Channel Decomposition
- Authors: Sangwoo Park, Osvaldo Simeone
- Abstract summary: We develop predictors for single-antenna frequency-flat channels based on transfer/meta-learned quadratic regularization.
We introduce transfer and meta-learning algorithms for LSTD-based prediction models.
- Score: 39.38412820403623
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: An efficient data-driven prediction strategy for multi-antenna
frequency-selective channels must operate based on a small number of pilot
symbols. This paper proposes novel channel prediction algorithms that address
this goal by integrating transfer and meta-learning with a reduced-rank
parametrization of the channel. The proposed methods optimize linear predictors
by utilizing data from previous frames, which are generally characterized by
distinct propagation characteristics, in order to enable fast training on the
time slots of the current frame. The proposed predictors rely on a novel
long-short-term decomposition (LSTD) of the linear prediction model that
leverages the disaggregation of the channel into long-term space-time
signatures and fading amplitudes. We first develop predictors for
single-antenna frequency-flat channels based on transfer/meta-learned quadratic
regularization. Then, we introduce transfer and meta-learning algorithms for
LSTD-based prediction models that build on equilibrium propagation (EP) and
alternating least squares (ALS). Numerical results under the 3GPP 5G standard
channel model demonstrate the impact of transfer and meta-learning on reducing
the number of pilots for channel prediction, as well as the merits of the
proposed LSTD parametrization.
Related papers
- Beam Prediction based on Large Language Models [51.45077318268427]
Millimeter-wave (mmWave) communication is promising for next-generation wireless networks but suffers from significant path loss.
Traditional deep learning models, such as long short-term memory (LSTM), enhance beam tracking accuracy however are limited by poor robustness and generalization.
In this letter, we use large language models (LLMs) to improve the robustness of beam prediction.
arXiv Detail & Related papers (2024-08-16T12:40:01Z) - A Multi-Channel Spatial-Temporal Transformer Model for Traffic Flow Forecasting [0.0]
We propose a multi-channel spatial-temporal transformer model for traffic flow forecasting.
It improves the accuracy of the prediction by fusing results from different channels of traffic data.
Experimental results on six real-world datasets demonstrate that introducing a multi-channel mechanism into the temporal model enhances performance.
arXiv Detail & Related papers (2024-05-10T06:37:07Z) - Joint Sparsity Pattern Learning Based Channel Estimation for Massive
MIMO-OTFS Systems [46.42375183269616]
We propose a channel estimation scheme based on joint sparsity pattern learning (JSPL) for massive multi-input multi-output (MIMO) modulation aided systems.
Both our simulation results and analysis demonstrate that the proposed channel estimation scheme achieves an improved performance over the representative state-of-the-art baseline schemes.
arXiv Detail & Related papers (2024-03-06T15:05:39Z) - CARD: Channel Aligned Robust Blend Transformer for Time Series
Forecasting [50.23240107430597]
We design a special Transformer, i.e., Channel Aligned Robust Blend Transformer (CARD for short), that addresses key shortcomings of CI type Transformer in time series forecasting.
First, CARD introduces a channel-aligned attention structure that allows it to capture both temporal correlations among signals.
Second, in order to efficiently utilize the multi-scale knowledge, we design a token blend module to generate tokens with different resolutions.
Third, we introduce a robust loss function for time series forecasting to alleviate the potential overfitting issue.
arXiv Detail & Related papers (2023-05-20T05:16:31Z) - Time-to-Green predictions for fully-actuated signal control systems with
supervised learning [56.66331540599836]
This paper proposes a time series prediction framework using aggregated traffic signal and loop detector data.
We utilize state-of-the-art machine learning models to predict future signal phases' duration.
Results based on an empirical data set from a fully-actuated signal control system in Zurich, Switzerland, show that machine learning models outperform conventional prediction methods.
arXiv Detail & Related papers (2022-08-24T07:50:43Z) - Over-the-Air Design of GAN Training for mmWave MIMO Channel Estimation [35.62977046569772]
We develop an unsupervised over-the-air (OTA) algorithm that utilizes noisy received pilot measurements to train a deep generative model.
We then formulate channel estimation from a limited number of pilot measurements as an inverse problem.
Our proposed framework has the potential to be trained online using real noisy pilot measurements.
arXiv Detail & Related papers (2022-05-25T02:26:34Z) - Two-Timescale End-to-End Learning for Channel Acquisition and Hybrid
Precoding [94.40747235081466]
We propose an end-to-end deep learning-based joint transceiver design algorithm for millimeter wave (mmWave) massive multiple-input multiple-output (MIMO) systems.
We develop a DNN architecture that maps the received pilots into feedback bits at the receiver, and then further maps the feedback bits into the hybrid precoder at the transmitter.
arXiv Detail & Related papers (2021-10-22T20:49:02Z) - Predicting Flat-Fading Channels via Meta-Learned Closed-Form Linear
Filters and Equilibrium Propagation [38.42468500092177]
Predicting fading channels is a classical problem with a vast array of applications.
In practice, the Doppler spectrum is unknown, and the predictor has only access to a limited time series of estimated channels.
This paper proposes to leverage meta-learning in order to mitigate the requirements in terms of training data for channel fading prediction.
arXiv Detail & Related papers (2021-10-01T14:00:23Z) - Model-Driven Deep Learning Based Channel Estimation and Feedback for
Millimeter-Wave Massive Hybrid MIMO Systems [61.78590389147475]
This paper proposes a model-driven deep learning (MDDL)-based channel estimation and feedback scheme for millimeter-wave (mmWave) systems.
To reduce the uplink pilot overhead for estimating the high-dimensional channels from a limited number of radio frequency (RF) chains, we propose to jointly train the phase shift network and the channel estimator as an auto-encoder.
Numerical results show that the proposed MDDL-based channel estimation and feedback scheme outperforms the state-of-the-art approaches.
arXiv Detail & Related papers (2021-04-22T13:34:53Z) - Massive MIMO Channel Prediction: Kalman Filtering vs. Machine Learning [18.939010023327498]
This paper focuses on channel prediction techniques for massive multiple-input multiple-output (MIMO) systems.
We develop and compare a vector Kalman filter (VKF)-based channel predictor and a machine learning (ML)-based channel predictor.
arXiv Detail & Related papers (2020-09-21T15:47:34Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.