Emergency communication network planning method based on deep reinforcement learning

被引:1
|
作者
Yin C. [1 ]
Yang R. [1 ]
Zhu W. [1 ]
Zou X. [1 ]
机构
[1] School of Information and Communication, National University of Defense Technology, Wuhan
关键词
Emergency communication; Intelligence; Network planning; Reinforcement learning;
D O I
10.3969/j.issn.1001-506X.2020.09.27
中图分类号
学科分类号
摘要
Focus on the problem of high demand on prior knowledge and weak timeliness of traditional algorithm for emergency communication network planning, a toplogy planning method for emergency communication network based on deep reinforcement learning is proposed. Developing a method of sample data generation using Monte Carlo tree search and self-game, the policy network and value network based on residual network is designed. On this basis, Tensorflow is used to build and train the model. Simulation results show that the proposed planning method can effctively realize the intelligent planning of network topology, and has high timeliness and feasibility. © 2020, Editorial Office of Systems Engineering and Electronics. All right reserved.
引用
收藏
页码:2091 / 2097
页数:6
相关论文
共 31 条
  • [1] CHITI F, FANTACCI R., A broadband wireless communication system for emergency management, IEEE Wireless Communications, 15, 3, pp. 8-14, (2008)
  • [2] ZHANG S N, LIU D L., Network optimization based on CW saving algorithm and genetic algorithm, Journal of Jilin University, 56, 5, pp. 1219-1223, (2018)
  • [3] ZHANG J, YANG X L., Mobile communication network self-planning based on simulated annealing algorithm, computer Engineering, 43, 5, pp. 83-87, (2017)
  • [4] ZHOU Y H., Research on node deployment and topology optimization strategy in FSO-based 5G backhaul networks, (2019)
  • [5] WU W J., Research on topology planning for multi-interface multi-channel wireless Mesh networks, (2013)
  • [6] LE D N, NGUYEN N G, DINH N H, Et al., Optimizing gateway placement in wireless mesh networks based on ACO algorithm, International Journal of Computer & Communication Engineering, 2, 2, pp. 45-53, (2013)
  • [7] KAMAR A, NAWAZ S J, PATWARY M M, Et al., Optimized algorithm for cellular network planning based on terrain and demand analysis, Proc. of the International Conference on Computer Technologies and Development, pp. 359-364, (2010)
  • [8] ZHOU Z H., Machine learning, (2016)
  • [9] LECUN Y, BENGIO Y, HINTON G., Deep learning, Nature, 521, 7553, pp. 436-444, (2015)
  • [10] LIU Q, ZHAI J W, ZHANG Z Z, Et al., A survey on deep reinforcement learning, Chinese Journal of Computers, 41, 1, pp. 1-27, (2018)