TY - CHAP
T1 - Machine Learning for Context-Aware Cross-Layer Optimization
AU - Yang, Yang
AU - Liu, Zening
AU - Zhao, Shuang
AU - Shao, Ziyu
AU - Wang, Kunlun
N1 - Publisher Copyright:
© 2020 John Wiley & Sons Ltd.
PY - 2019/1/1
Y1 - 2019/1/1
N2 - This chapter presents a predictive scheduling model and develops the predictive multi-tier operations scheduling (PMOS) algorithm, where the fog control node is assumed to be aware of users’ future request information within a limited future time window. In addition, it addresses a cost model and the resulting cost-minimization user-scheduling problem in multi-tier fog computing networks. The chapter first presents the system model. Under the fog-enabled network architecture, the chapter formulates the problem under consideration. The online fog-enabled multi-tier operations scheduling (FEMOS) algorithm is then proposed and corresponding performance analysis is conducted. The chapter further develops the PMOS algorithm based on the proposed FEMOS algorithm and predicted users’ information. Furthermore, it proposes a unified multi-tier cost model to motivate the fog access nodes for resources sharing, and develops the cost-oriented user scheduling algorithm to effectively solve the resulted cost-minimization user scheduling problem.
AB - This chapter presents a predictive scheduling model and develops the predictive multi-tier operations scheduling (PMOS) algorithm, where the fog control node is assumed to be aware of users’ future request information within a limited future time window. In addition, it addresses a cost model and the resulting cost-minimization user-scheduling problem in multi-tier fog computing networks. The chapter first presents the system model. Under the fog-enabled network architecture, the chapter formulates the problem under consideration. The online fog-enabled multi-tier operations scheduling (FEMOS) algorithm is then proposed and corresponding performance analysis is conducted. The chapter further develops the PMOS algorithm based on the proposed FEMOS algorithm and predicted users’ information. Furthermore, it proposes a unified multi-tier cost model to motivate the fog access nodes for resources sharing, and develops the cost-oriented user scheduling algorithm to effectively solve the resulted cost-minimization user scheduling problem.
KW - Context-aware cross-layer optimization
KW - Cost model
KW - Cost-minimization user-scheduling problem
KW - Fog access nodes
KW - Fog control node
KW - Machine learning
KW - Multi-tier fog computing networks
KW - Performance analysis
KW - Predictive multi-tier operations scheduling algorithm
KW - Predictive scheduling model
UR - https://www.scopus.com/pages/publications/85205648507
U2 - 10.1002/9781119562306.ch19
DO - 10.1002/9781119562306.ch19
M3 - 章节
AN - SCOPUS:85205648507
SN - 9781119562252
SP - 397
EP - 424
BT - Machine Learning for Future Wireless Communications
PB - wiley
ER -