Litcius/Paper detail

EER-RL: Energy-Efficient Routing Based on Reinforcement Learning

Vially Kazadi Mutombo, Seung‐Yeon Lee, Jusuk Lee, Jiman Hong

2021Mobile Information Systems42 citationsDOIOpen Access PDF

Abstract

Wireless sensor devices are the backbone of the Internet of things (IoT), enabling real-world objects and human beings to be connected to the Internet and interact with each other to improve citizens’ living conditions. However, IoT devices are memory and power-constrained and do not allow high computational applications, whereas the routing task is what makes an object to be part of an IoT network despite of being a high power-consuming task. Therefore, energy efficiency is a crucial factor to consider when designing a routing protocol for IoT wireless networks. In this paper, we propose EER-RL, an energy-efficient routing protocol based on reinforcement learning. Reinforcement learning (RL) allows devices to adapt to network changes, such as mobility and energy level, and improve routing decisions. The performance of the proposed protocol is compared with other existing energy-efficient routing protocols, and the results show that the proposed protocol performs better in terms of energy efficiency and network lifetime and scalability.

Topics & Concepts

Computer scienceReinforcement learningRouting protocolComputer networkDistributed computingWireless Routing ProtocolScalabilityZone Routing ProtocolRouting (electronic design automation)Link-state routing protocolEfficient energy useDynamic Source RoutingArtificial intelligenceDatabaseEngineeringElectrical engineeringEnergy Efficient Wireless Sensor NetworksIoT and Edge/Fog ComputingEnergy Harvesting in Wireless Networks