Litcius/Paper detail

An intelligent task offloading algorithm (iTOA) for UAV edge computing network

Jienan Chen, Siyu Chen, Siyu Luo, Qi Wang, Bin Cao, Xiaoqian Li

2020Digital Communications and Networks70 citationsDOIOpen Access PDF

Abstract

Unmanned Aerial Vehicle (UAV) has emerged as a promising technology for the support of human activities, such as target tracking, disaster rescue, and surveillance. However, these tasks require a large computation load of image or video processing, which imposes enormous pressure on the UAV computation platform. To solve this issue, in this work, we propose an intelligent Task Offloading Algorithm (iTOA) for UAV edge computing network. Compared with existing methods, iTOA is able to perceive the network’s environment intelligently to decide the offloading action based on deep Monte Calor Tree Search (MCTS), the core algorithm of Alpha Go. MCTS will simulate the offloading decision trajectories to acquire the best decision by maximizing the reward, such as lowest latency or power consumption. To accelerate the search convergence of MCTS, we also proposed a splitting Deep Neural Network (sDNN) to supply the prior probability for MCTS. The sDNN is trained by a self-supervised learning manager. Here, the training data set is obtained from iTOA itself as its own teacher. Compared with game theory and greedy search-based methods, the proposed iTOA improves service latency performance by 33% and 60%, respectively.

Topics & Concepts

Computer scienceTask (project management)Edge computingEnhanced Data Rates for GSM EvolutionMobile edge computingAlgorithmReal-time computingArtificial intelligenceEconomicsManagementIoT and Edge/Fog ComputingUAV Applications and OptimizationAdvanced Neural Network Applications