Litcius/Paper detail

Lifelong Learning for Minimizing Age of Information in Internet of Things Networks

Zhenzhen Gong, Qimei Cui, Christina Chaccour, Bo Zhou, Mingzhe Chen, Walid Saad

202111 citationsDOI

Abstract

In this paper, a lifelong learning problem is studied for an Internet of Things (IoT) system. In the considered model, each IoT device aims to balance its information freshness and energy consumption tradeoff by controlling its computational resource allocation at each time slot under dynamic environments. An unmanned aerial vehicle (UAV) is deployed as a flying base station so as to enable the IoT devices to adapt to novel environments. To this end, a new lifelong reinforcement learning algorithm, used by the UAV, is proposed in order to adapt the operation of the devices at each visit by the UAV. By using the experience from previously visited devices and environments, the UAV can help devices adapt faster to future states of their environment. To do so, a knowledge base shared by all devices is maintained at the UAV. Simulation results show that the proposed algorithm can converge 25% to 50% faster than a policy gradient baseline algorithm that optimizes each device’s decision making problem in isolation.

Topics & Concepts

Computer scienceReinforcement learningLifelong learningBase stationInternet of ThingsBaseline (sea)Energy consumptionThe InternetReal-time computingDistributed computingResource allocationComputer networkArtificial intelligenceEmbedded systemEngineeringWorld Wide WebOceanographyElectrical engineeringGeologyPsychologyPedagogyAge of Information OptimizationIoT Networks and ProtocolsDistributed Sensor Networks and Detection Algorithms