X
Xianwei Li
Researcher at Soochow University (Suzhou)
Publications - 23
Citations - 438
Xianwei Li is an academic researcher from Soochow University (Suzhou). The author has contributed to research in topics: Cloud computing & Mobile edge computing. The author has an hindex of 6, co-authored 22 publications receiving 177 citations. Previous affiliations of Xianwei Li include Waseda University.
Papers
More filters
Journal ArticleDOI
A Novel Cost Optimization Strategy for SDN-Enabled UAV-Assisted Vehicular Computation Offloading
TL;DR: The offloading decision-making problem is formulated as a multi-players computation offloading sequential game, and the UAV-assisted Vehicular computation Cost Optimization (UVCO) algorithm is designed to solve this problem.
Journal ArticleDOI
Vehicular Communications: Standardization and Open Issues
Liang Zhao,Xianwei Li,Bo Gu,Zhenyu Zhou,Shahid Mumtaz,Valerio Frascolla,Haris Gacanin,Muhammad Ikram Ashraf,Jonathan Rodriguez,Mingfei Yang,Saba Al-Rubaye +10 more
TL;DR: The ready-to-deploy DSRC and the promising LTE-V2X are analyzed, compared according to a set of significant technical and non-technical aspects, and the limitations of both technologies are outlined.
Journal ArticleDOI
A Novel Improved Bat Algorithm in UAV Path Planning
Journal ArticleDOI
Vehicular Computation Offloading for Industrial Mobile Edge Computing
TL;DR: A minimum incremental task allocation algorithm is proposed to divide the whole task and assign the divided units for the minimum cost increment each time to optimize the system cost including execution time, energy consumption, and the ID rental price.
Journal ArticleDOI
A cooperative resource allocation model for IoT applications in mobile edge computing
TL;DR: This work studies multi-user IoT applications offloading for a MEC system, which cooperatively considers to allocate both the resources of computation and communication and indicates that offloading decisions, energy consumption, latency, and the impact of the number of IoT devices have shown superior improvement over traditional models.