The spectrum efficiency can be greatly enhanced by the deployment of machine-to-machine (M2M) communications through cellular networks. Existing resource allocation approaches allocate maximum resource blocks (RBs) for cellular user equipments (CUEs). However, M2M user equipments (MUEs) share the same frequency among themselves within the same tier. This results in generating co-tier interference, which may deteriorate the MUE’s quality-of-service (QoS). To tackle this problem and improve the user experience, in this paper, we propose a novel resource utilization policy, which exploits reinforcement learning (RL) algorithm considering the pointer network (PN). In particular, we design an optimization problem that determines the optimal freq...
Abstract—This paper examines how flexible cellular system architectures and efficient spectrum manag...
Recently, extensive research efforts have been devoted to developing beyond fifth generation (B5G), ...
This paper examines the application of reinforcement learning to a wireless communication problem. ...
Device-to-device (D2D) communication is an essential feature for the future cellular networks as it ...
The goal of the study presented in this paper is to evaluate the performance of a proposed Reinforce...
In this paper, a resource allocation (RA) scheme based on deep reinforcement learning (DRL) is desig...
This paper proposes reinforcement learning as a foundational stone of a framework for efficient spec...
To improve the system capacity, spectral performance, and energy efficiency, stringent requirements ...
Mission-critical communication (MCC) is one of the main goals in 5G, which can leverage multiple dev...
International audienceTraditional cellular networks have been considered the most promising candidat...
Nowadays, there is an unexpected explosion in the demand for wireless network resources. This is due...
International audienceMachine to machine (M2M) communications pose significant challenges to the cel...
The next-generation mobile communication system, e.g., 6G communication system, is envisioned to sup...
Graduation date: 2011The enormous success of wireless technology has recently led to an explosive de...
We propose a dynamic resource allocation algorithm for device-To-device (D2D) communication underlyi...
Abstract—This paper examines how flexible cellular system architectures and efficient spectrum manag...
Recently, extensive research efforts have been devoted to developing beyond fifth generation (B5G), ...
This paper examines the application of reinforcement learning to a wireless communication problem. ...
Device-to-device (D2D) communication is an essential feature for the future cellular networks as it ...
The goal of the study presented in this paper is to evaluate the performance of a proposed Reinforce...
In this paper, a resource allocation (RA) scheme based on deep reinforcement learning (DRL) is desig...
This paper proposes reinforcement learning as a foundational stone of a framework for efficient spec...
To improve the system capacity, spectral performance, and energy efficiency, stringent requirements ...
Mission-critical communication (MCC) is one of the main goals in 5G, which can leverage multiple dev...
International audienceTraditional cellular networks have been considered the most promising candidat...
Nowadays, there is an unexpected explosion in the demand for wireless network resources. This is due...
International audienceMachine to machine (M2M) communications pose significant challenges to the cel...
The next-generation mobile communication system, e.g., 6G communication system, is envisioned to sup...
Graduation date: 2011The enormous success of wireless technology has recently led to an explosive de...
We propose a dynamic resource allocation algorithm for device-To-device (D2D) communication underlyi...
Abstract—This paper examines how flexible cellular system architectures and efficient spectrum manag...
Recently, extensive research efforts have been devoted to developing beyond fifth generation (B5G), ...
This paper examines the application of reinforcement learning to a wireless communication problem. ...