The goal of 6G communication networks requires higher transmission speeds, tremendous data processing, and low-latency communication. Orthogonal frequency-division multiplexing (OFDM), which is widely utilized in 5G communication systems, may be a viable alternative for 6G. It significantly reduces inter symbol interference (ISI) in the frequency-selective fading environment. Channel estimation is critical in OFDM to optimize system performance. Deep learning has been employed as an appealing alternative for channel estimation and signal detection in OFDM-based communication systems due to its better potential for feature learning and representation. In this study, we examine the deep neural network (DNN) layers created from long-short term...
For high data rate wireless communication systems, developing an efficient channel estimation approa...
For high data rate wireless communication systems, developing an efficient channel estimation approa...
The feasibility study of deep learning (DL) approaches for reliable, flexible, and high throughput w...
Channel estimation is a critical component in wireless communication systems, including orthogonal f...
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...
Recently much research work has focused on employing deep learning (DL) algorithms to perform channe...
In this dissertation, we build a deep learning (DL)-based orthogonal frequency division multiplexing...
In traditional orthogonal frequency division multiplexing (OFDM) system, the cyclic prefix (CP) is ...
Channel estimation plays a critical role in the system performance of wireless networks. In addition...
This paper describes a wireless communication model based on IEEE 802.11n. Typical methods for chann...
This letter presents the first attempt of exploiting deep learning (DL) in the signal detection of o...
OFDM (orthogonal frequency division multiplexing) is a wireless network methodology that sends multi...
This report investigates the quantization effects of low-resolution analog-to-digital converters in ...
This report investigates the quantization effects of low-resolution analog-to-digital converters in ...
For high data rate wireless communication systems, developing an efficient channel estimation approa...
For high data rate wireless communication systems, developing an efficient channel estimation approa...
The feasibility study of deep learning (DL) approaches for reliable, flexible, and high throughput w...
Channel estimation is a critical component in wireless communication systems, including orthogonal f...
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...
Recently much research work has focused on employing deep learning (DL) algorithms to perform channe...
In this dissertation, we build a deep learning (DL)-based orthogonal frequency division multiplexing...
In traditional orthogonal frequency division multiplexing (OFDM) system, the cyclic prefix (CP) is ...
Channel estimation plays a critical role in the system performance of wireless networks. In addition...
This paper describes a wireless communication model based on IEEE 802.11n. Typical methods for chann...
This letter presents the first attempt of exploiting deep learning (DL) in the signal detection of o...
OFDM (orthogonal frequency division multiplexing) is a wireless network methodology that sends multi...
This report investigates the quantization effects of low-resolution analog-to-digital converters in ...
This report investigates the quantization effects of low-resolution analog-to-digital converters in ...
For high data rate wireless communication systems, developing an efficient channel estimation approa...
For high data rate wireless communication systems, developing an efficient channel estimation approa...
The feasibility study of deep learning (DL) approaches for reliable, flexible, and high throughput w...