Abstract Deep learning based channel estimation techniques have recently found an overwhelming interest owing to data-driven learning-based adaptability compared to conventional estimation techniques which rely on model-based approach. This paper exploits the availability of low cost software defined radio (SDR) devices to implement and test over-the-air (OTA) deep learning driven channel estimation solutions in realistic settings for 5G and beyond wireless communications. We have designed and implemented a ZYNQ SDR-based deep learning driven channel estimation platform which utilises real-world 5G new radio (NR) signals to develop and test the performance of a deep learning solution for wireless channel estimators. To this end, we have co...
For high data rate wireless communication systems, developing an efficient channel estimation approa...
Comprehensive and accurate channel modeling is paramount to the systematic analysis of wireless netw...
This paper aims to predict radio channel variations over time by deep learning from channel observat...
In this paper, we present a deep learning-based technique for channel estimation. By treating the ti...
Channel estimation plays a critical role in the system performance of wireless networks. In addition...
Channel estimation is a critical component in wireless communication systems, including orthogonal f...
The feasibility study of deep learning (DL) approaches for reliable, flexible, and high throughput w...
Orthogonal frequency-division multiplexing (OFDM) is commonly used in wireless communication systems...
This dissertation presents the results of channel estimation and signal detection using deep learnin...
The goal of 6G communication networks requires higher transmission speeds, tremendous data processin...
peer reviewedDeep learning has demonstrated the important roles in improving the system performance ...
This paper describes a wireless communication model based on IEEE 802.11n. Typical methods for chann...
In this paper, we propose a learning-aided signal processing solution for channel estimation in 5G n...
Following the continuous development of the information technology, the concept of dense urban netwo...
Deep learning (DL) has emerged as an effective tool for channel estimation in wireless communication...
For high data rate wireless communication systems, developing an efficient channel estimation approa...
Comprehensive and accurate channel modeling is paramount to the systematic analysis of wireless netw...
This paper aims to predict radio channel variations over time by deep learning from channel observat...
In this paper, we present a deep learning-based technique for channel estimation. By treating the ti...
Channel estimation plays a critical role in the system performance of wireless networks. In addition...
Channel estimation is a critical component in wireless communication systems, including orthogonal f...
The feasibility study of deep learning (DL) approaches for reliable, flexible, and high throughput w...
Orthogonal frequency-division multiplexing (OFDM) is commonly used in wireless communication systems...
This dissertation presents the results of channel estimation and signal detection using deep learnin...
The goal of 6G communication networks requires higher transmission speeds, tremendous data processin...
peer reviewedDeep learning has demonstrated the important roles in improving the system performance ...
This paper describes a wireless communication model based on IEEE 802.11n. Typical methods for chann...
In this paper, we propose a learning-aided signal processing solution for channel estimation in 5G n...
Following the continuous development of the information technology, the concept of dense urban netwo...
Deep learning (DL) has emerged as an effective tool for channel estimation in wireless communication...
For high data rate wireless communication systems, developing an efficient channel estimation approa...
Comprehensive and accurate channel modeling is paramount to the systematic analysis of wireless netw...
This paper aims to predict radio channel variations over time by deep learning from channel observat...