scholarly journals DRL-Based Intelligent Resource Allocation for Diverse QoS in 5G and toward 6G Vehicular Networks: A Comprehensive Survey

2021 ◽  
Vol 2021 ◽  
pp. 1-21
Author(s):  
Hoa TT. Nguyen ◽  
Minh T. Nguyen ◽  
Hai T. Do ◽  
Hoang T. Hua ◽  
Cuong V. Nguyen

The vehicular network is taking great attention from both academia and industry to enable the intelligent transportation system (ITS), autonomous driving, and smart cities. The system provides extremely dynamic features due to the fast mobile characteristics. While the number of different applications in the vehicular network is growing fast, the quality of service (QoS) in the 5G vehicular network becomes diverse. One of the most stringent requirements in the vehicular network is a safety-critical real-time system. To guarantee low-latency and other diverse QoS requirements, wireless network resources should be effectively utilized and allocated among vehicles, such as computation power in cloud, fog, and edge servers; spectrum at roadside units (RSUs); and base stations (BSs). Historically, optimization problems have mostly been investigated to formulate resource allocation and are solved by mathematical computation methods. However, the optimization problems are usually nonconvex and hard to be solved. Recently, machine learning (ML) is a powerful technique to cope with the complexity in computation and has capability to cope with big data and data analysis in the heterogeneous vehicular network. In this paper, an overview of resource allocation in the 5G vehicular network is represented with the support of traditional optimization and advanced ML approaches, especially a deep reinforcement learning (DRL) method. In addition, a federated deep reinforcement learning- (FDRL-) based vehicular communication is proposed. The challenges, open issues, and future research directions for 5G and toward 6G vehicular networks, are discussed. A multiaccess edge computing assisted by network slicing and a distributed federated learning (FL) technique is analyzed. A FDRL-based UAV-assisted vehicular communication is discussed to point out the future research directions for the networks.

1983 ◽  
Vol 9 (1) ◽  
pp. 27-39 ◽  
Author(s):  
Donald H. Brush ◽  
Betty Jo Licata

Skill learnability, the degree to which a particular managerial skill can be acquired or modified by training and development, is de scribed and discussed. It is argued that those managerial skills com prised of large sociallinteractive components and affected by under lying noncognitive attributes are more difficult to learn than skills which can be articulated through a common body of knowledge or technology. Implications for organization resource allocation be tween selection and training strategies and future research directions are discussed.


Author(s):  
Ruohan Zhang ◽  
Faraz Torabi ◽  
Lin Guan ◽  
Dana H. Ballard ◽  
Peter Stone

Reinforcement learning agents can learn to solve sequential decision tasks by interacting with the environment. Human knowledge of how to solve these tasks can be incorporated using imitation learning, where the agent learns to imitate human demonstrated decisions. However, human guidance is not limited to the demonstrations. Other types of guidance could be more suitable for certain tasks and require less human effort. This survey provides a high-level overview of five recent learning frameworks that primarily rely on human guidance other than conventional, step-by-step action demonstrations. We review the motivation, assumption, and implementation of each framework. We then discuss possible future research directions.


2021 ◽  
Vol 2021 ◽  
pp. 1-22
Author(s):  
Mahima Dubey ◽  
Vijay Kumar ◽  
Manjit Kaur ◽  
Thanh-Phong Dao

Harmony search algorithm is the recently developed metaheuristic in the last decade. It mimics the behavior of a musician producing a perfect harmony. It has been used to solve the wide variety of real-life optimization problems due to its easy implementation over other metaheuristics. It has an ability to provide the balance between exploration and exploitation during search. In this paper, a systematic review on harmony search algorithm (HSA) is presented. The natural inspiration and conceptual framework of HSA are discussed. The control parameters of HSA are described with their mathematical foundation. The improvement and hybridization in HSA with other metaheuristics are discussed in detail. The applicability of HSA in different problem domains is studied. The future research directions of HSA are also investigated.


Author(s):  
Jamie Carlson ◽  
Dennis Ahrholdt ◽  
Ramaswami Sridharan ◽  
Togar Simatupang

This chapter contributes to the study of flow theory development in the online environment by analysing its quadratic effects on consumer loyalty and flow’s role acting in parallel with satisfaction and trust. In doing so, the research reveals efficient key resource allocation implications to enhance consumer loyalty, as well as future research directions to further advance the development of flow theory.


2014 ◽  
Vol 532 ◽  
pp. 183-186 ◽  
Author(s):  
Jian Cao ◽  
Cong Yan ◽  
Xiao Nan Wang

RL can autonomously get optional policy with the knowledge obtained by trial-and-error and continuously interacting with dynamic environment. firstly, the model and theory of reinforcement learning is given. Then, a description of the controller architecture and associated stability analysis is given, followed by a more in-depth look at its application to a tiltrotor aircraft. This is followed by a summary of future research directions, and possibilities for technology transition that are currently underway.


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