Litcius/Paper detail

Deep Q Network–Driven Task Offloading for Efficient Multimedia Data Analysis in Edge Computing–Assisted IoV

Chenyi Yang, Xiaolong Xu, Xiaokang Zhou, Lianyong Qi

2022ACM Transactions on Multimedia Computing Communications and Applications37 citationsDOI

Abstract

With the prosperity of Industry 4.0, numerous emerging industries continue to gain popularity and their market scales are expanding ceaselessly. The Internet of Vehicles (IoV), one of the thriving intelligent industries, enjoys bright development prospects. However, at the same time, the reliability and availability of IoV applications are confronted with two major bottlenecks of time delay and energy consumption. To make matters worse, massive heterogeneous and multi-dimensional multimedia data generated on the IoV present a huge obstacle to effective data analysis. Fortunately, the advent of edge computing technology enables tasks to be offloaded to edge servers, which significantly reduces total overhead of IoV systems. Deep reinforcement learning (DRL), equipped with its excellent perception and decision-making capability, is undoubtedly a dominant technology to solve task offloading problems. In this article, we first employ an optimized Fuzzy C-means algorithm to cluster vehicles and other edge devices according to their respective service quality requirements. Then, we employ an election algorithm to assist in maintaining the stability of the IoV. Last, we propose a task-offloading algorithm based on the Deep Q Network (DQN) to acquire an optimal task offloading scheme. Massive simulation experiments demonstrate the superiority of our method in minimizing time delay and energy consumption.

Topics & Concepts

Computer scienceEnergy consumptionEdge computingReliability (semiconductor)Enhanced Data Rates for GSM EvolutionMobile edge computingServerTask (project management)Quality of experienceOverhead (engineering)Quality of serviceDistributed computingComputer networkArtificial intelligencePhysicsEcologyQuantum mechanicsPower (physics)ManagementEconomicsOperating systemBiologyIoT and Edge/Fog ComputingBlockchain Technology Applications and SecurityAge of Information Optimization