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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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Active intersession network coding-aware routing

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Oblivious routing in wireless mesh networks

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Trail-Based Search for Efficient Event Report to Mobile Actors in Wireless Sensor and Actor Networks.

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STFDR: Architecture of Competent Protocol for Efficient Route Discovery and Reliable Transmission in CEAACK MANETs

TL;DR: The aim of the proposed protocol is to provide an environment where only the trusted nodes participate in route discovery and secure packet transmission, which is a unique dynamic routing protocol that provides a secure and a reliable network environment.
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Cooperation promotion from the perspective of behavioral economics: An incentive mechanism based on loss aversion in vehicular Ad-hoc networks

TL;DR: A Loss-Aversion-based Incentive Mechanism (LAIM) is proposed to promote the comprehensive perception and sharing of information in the VANETs and the utility function of nodes is redesigned to correct the assumption that a gain and a loss of an equal amount could offset each other in traditional economics.
References
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