TY - JOUR
T1 - Predictive UAV Base Station Deployment and Service Offloading with Distributed Edge Learning
AU - Zhao, Zhongliang
AU - Pacheco, Lucas
AU - Santos, Hugo
AU - Liu, Minghui
AU - Maio, Antonio Di
AU - Rosari, Denis
AU - Cerqueira, Eduardo
AU - Braun, Torsten
AU - Cao, Xianbin
N1 - Publisher Copyright:
© 2004-2012 IEEE.
PY - 2021/12/1
Y1 - 2021/12/1
N2 - In modern networks, edge computing will be responsible for processing and learning from the critical network-and user-generated data, such as wireless link usage, mobility information, application requests, and many others. The presence of Artificial Intelligence-based (AI) applications at the edge of the network will enable the network to predict necessary user behavior and its impact on network infrastructure, such as base station overloading. One of the main strategies for offloading users and base stations is to deploy UAV base stations, or flying base stations, which can dynamically provide service and connectivity. In this article, we introduce a framework for distributed learning over Multi-access Edge Computing (MEC), which manages data applications in a fully distributed setting across edge servers, thus reducing the cost of collecting user information in a centralized server. We couple the proposed distributed learning with a novel similarity metric for user trajectories, which can aggregate neural network models with similar costs as other model aggregation techniques. However, the aggregation technique can achieve much higher accuracy. Furthermore, we apply the proposed distributed learning scheme to manage and deploy flying base stations to areas that experience high demand or poor user connectivity, thus optimizing connectivity in terms of user satisfaction, delay, and network throughput.
AB - In modern networks, edge computing will be responsible for processing and learning from the critical network-and user-generated data, such as wireless link usage, mobility information, application requests, and many others. The presence of Artificial Intelligence-based (AI) applications at the edge of the network will enable the network to predict necessary user behavior and its impact on network infrastructure, such as base station overloading. One of the main strategies for offloading users and base stations is to deploy UAV base stations, or flying base stations, which can dynamically provide service and connectivity. In this article, we introduce a framework for distributed learning over Multi-access Edge Computing (MEC), which manages data applications in a fully distributed setting across edge servers, thus reducing the cost of collecting user information in a centralized server. We couple the proposed distributed learning with a novel similarity metric for user trajectories, which can aggregate neural network models with similar costs as other model aggregation techniques. However, the aggregation technique can achieve much higher accuracy. Furthermore, we apply the proposed distributed learning scheme to manage and deploy flying base stations to areas that experience high demand or poor user connectivity, thus optimizing connectivity in terms of user satisfaction, delay, and network throughput.
KW - Distributed machine learning
KW - Flying base station deployment
KW - Mobility management
KW - Trajectory prediction
KW - Unmanned aerial vehicle
UR - https://www.scopus.com/pages/publications/85118559911
U2 - 10.1109/TNSM.2021.3123216
DO - 10.1109/TNSM.2021.3123216
M3 - 文章
AN - SCOPUS:85118559911
SN - 1932-4537
VL - 18
SP - 3955
EP - 3972
JO - IEEE Transactions on Network and Service Management
JF - IEEE Transactions on Network and Service Management
IS - 4
ER -