Multi user deep reinforcement learning using deep q network
Author(s):
Kamalakannan, Vignesh, Monisha
Keywords:
Wireless networks, multi-user DSA, Agent, Environment, states and action, multi-agent learning, deep reinforcement learning.
Abstract
The problem in the DSA dynamic spectrum is the path of the distance between the nodes into the environment. The maximization in multichannel wireless networks. Where there is the problem which is it to take the shortest path by the node in the environment by the agent. This will make the message flow between the distance of the node. By this within it the certain attempt probability. From after into it time slot, Where the user of each node is delivered the packet successfully into the DSA. where into the distributed manner without online coordination or into it. The optimal rectification for this is make high cost due to this observe of the agent that states in the environment. So, for this to tackle this problem, so for that we developed a DSA algorithm which is shows the specific time slot into the environment by this we access the shortest action path and pass coordinate the message in o the environment. Which shows the principle for the implementation of the algorithm.
Article Details
Unique Paper ID: 153188
Publication Volume & Issue: Volume 8, Issue 6
Page(s): 627 - 630
Article Preview & Download
Share This Article
Conference Alert
NCSST-2021
AICTE Sponsored National Conference on Smart Systems and Technologies
Last Date: 25th November 2021
SWEC- Management
LATEST INNOVATION’S AND FUTURE TRENDS IN MANAGEMENT