Wireless networks have been widely utilized in industries, where wireless links are challenged by the severe nonstationary Rician fading channel, which requires online link quality estimation to support high-quality wireless services. However, most traditional Rician estimation approaches are designed for channel measurements and work only with nonmodulated symbols. Then, the online Rician estimation usually requires a priori aiding pilots or known modulation order to cancel the modulation interference. This article proposes a nondata-Aided method with redundant Gaussian mixture model (GMM). The convergence paradigm of GMM with redundant subcomponents has been analyzed, guided by which the redundant subcomponents can be iteratively discrimi...
New simulation models are proposed for Rayleigh and Rician fading channels. First, the statistical p...
Optimal receiver diversity combining employing linear channel estimation is examined. Based on the s...
peer reviewedIn this paper, we create a framework for training-based channel estimation under differ...
Rician distribution has been widely utilized to describe wireless fading channel. In the non-station...
Ultra high frequency radio frequency identification (UHF RFID) systems can use passive tags to refle...
Recently, a Clarke\u27s model-based simulator was proposed for Rayleigh fading channels. However, th...
We present a new method for calculating the probability of error per symbol (Symbol Error Probabilit...
The statistical properties of Clarke\u27s fading model with a finite number of sinusoids are analyze...
In this paper, we create a framework for training-based channel estimation under different channel a...
Channel estimation (CE) plays a crucial role in establishing a wireless link, specifically at the re...
Pilot contamination (PC) is a major problem in massive multiple-input multiple-output (MIMO) systems...
In most of the previous researches on the multiple-input multiple-output (MIMO) channel estimation, ...
In this paper, we propose two novel semi-blind channel estimation techniques based on QR decompositi...
International audienceSpatial Modulation (SM) is proposed in the literature as a new Multiple-Input ...
Distributions of colluding decode-and-forward (DF) opportunistic relays (ORs) employing maximal rati...
New simulation models are proposed for Rayleigh and Rician fading channels. First, the statistical p...
Optimal receiver diversity combining employing linear channel estimation is examined. Based on the s...
peer reviewedIn this paper, we create a framework for training-based channel estimation under differ...
Rician distribution has been widely utilized to describe wireless fading channel. In the non-station...
Ultra high frequency radio frequency identification (UHF RFID) systems can use passive tags to refle...
Recently, a Clarke\u27s model-based simulator was proposed for Rayleigh fading channels. However, th...
We present a new method for calculating the probability of error per symbol (Symbol Error Probabilit...
The statistical properties of Clarke\u27s fading model with a finite number of sinusoids are analyze...
In this paper, we create a framework for training-based channel estimation under different channel a...
Channel estimation (CE) plays a crucial role in establishing a wireless link, specifically at the re...
Pilot contamination (PC) is a major problem in massive multiple-input multiple-output (MIMO) systems...
In most of the previous researches on the multiple-input multiple-output (MIMO) channel estimation, ...
In this paper, we propose two novel semi-blind channel estimation techniques based on QR decompositi...
International audienceSpatial Modulation (SM) is proposed in the literature as a new Multiple-Input ...
Distributions of colluding decode-and-forward (DF) opportunistic relays (ORs) employing maximal rati...
New simulation models are proposed for Rayleigh and Rician fading channels. First, the statistical p...
Optimal receiver diversity combining employing linear channel estimation is examined. Based on the s...
peer reviewedIn this paper, we create a framework for training-based channel estimation under differ...