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Journal ArticleDOI

Directional routing and scheduling for green vehicular delay tolerant networks

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TLDR
A directional routing and scheduling scheme (DRSS) for green vehicle DTNs is presented by using Nash Q-learning approach that can optimize the energy efficiency with the considerations of congestion, buffer and delay.
Abstract
The vehicle delay tolerant networks (DTNs) make opportunistic communications by utilizing the mobility of vehicles, where the node makes delay-tolerant based "carry and forward" mechanism to deliver the packets. The routing schemes for vehicle networks are challenging for varied network environment. Most of the existing DTN routing including routing for vehicular DTNs mainly focus on metrics such as delay, hop count and bandwidth, etc. A new focus in green communications is with the goal of saving energy by optimizing network performance and ultimately protecting the natural climate. The energy---efficient communication schemes designed for vehicular networks are imminent because of the pollution, energy consumption and heat dissipation. In this paper, we present a directional routing and scheduling scheme (DRSS) for green vehicle DTNs by using Nash Q-learning approach that can optimize the energy efficiency with the considerations of congestion, buffer and delay. Our scheme solves the routing and scheduling problem as a learning process by geographic routing and flow control toward the optimal direction. To speed up the learning process, our scheme uses a hybrid method with forwarding and replication according to traffic pattern. The DRSS algorithm explores the possible strategies, and then exploits the knowledge obtained to adapt its strategy and achieve the desired overall objective when considering the stochastic non-cooperative game in on-line multi-commodity routing situations. The simulation results of a vehicular DTN with predetermined mobility model show DRSS achieves good energy efficiency with learning ability, which can guarantee the delivery ratio within the delay bound.

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Citations
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Future Intelligent and Secure Vehicular Network Toward 6G: Machine-Learning Approaches

TL;DR: A survey on various ML techniques applied to communication, networking, and security parts in vehicular networks and envision the ways of enabling AI toward a future 6G vehicular network, including the evolution of intelligent radio (IR), network intelligentization, and self-learning with proactive exploration.
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Fuzzy logic based unequal clustering for wireless sensor networks

TL;DR: An algorithm called fuzzy based unequal clustering is proposed in this paper to enhance the execution of the current algorithms and is compared with two algorithms, one with an equivalent clustering algorithm called LEACH and another with an unequal clusters algorithm called EAUCF.
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EE-LEACH: development of energy-efficient LEACH Protocol for data gathering in WSN

TL;DR: The experimental results shows that the proposed EE-LEACH yields better performance than the existing energy-balanced routing protocol (EBRP) and LEACH Protocol in terms of better packet delivery ratio, lesser end-to-end delay and energy consumption.
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A Q-Learning Approach to Flocking With UAVs in a Stochastic Environment

TL;DR: Simulation results demonstrate the feasibility of the proposed learning approach at enabling agents to learn how to flock in a leader-follower topology, while operating in a nonstationary stochastic environment.
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Secure and Privacy Preserving Protocol for Cloud-Based Vehicular DTNs

TL;DR: A novel threshold credit-based incentive mechanism (TCBI) is proposed based on the modified model of population dynamics to efficiently resist the node compromise attacks, stimulate the cooperation among intermediate nodes, maximize vehicular nodes' interest, and realize the fairness of possessing the same opportunity of transmitting packets for credits.
References
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Proceedings ArticleDOI

Conditional shortest path routing in delay tolerant networks

TL;DR: Through trace-driven simulations, it is demonstrated that CSPR achieves higher delivery rate and lower end-to-end delay compared to the shortest path based routing protocols that use the conventional intermeeting time as the link metric.
Proceedings ArticleDOI

Green ICT: Energy Efficiency in a Motorway Model

TL;DR: A network model is provided to compute the energy consumption of VANETs and compare their energy efficiency performance and the proposed genetic algorithm model has been found to be more energy efficient than the adjustable-grid model which is better than the equal- grid model.
Proceedings ArticleDOI

A fuzzy logic-based routing for Delay-Tolerant heterogeneous Networks

TL;DR: A prediction based routing protocol for the heterogeneous delay tolerant networks wherein edge servers are distributed over the borders of the different network domains and can efficiently deliver the message under limited buffer space, comparing with two representative delay tolerant network routing protocols in the literature.
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