Routing Recovery for UAV Networks with Deliberate Attacks: A
Reinforcement Learning based Approach
- URL: http://arxiv.org/abs/2308.06973v1
- Date: Mon, 14 Aug 2023 07:11:55 GMT
- Title: Routing Recovery for UAV Networks with Deliberate Attacks: A
Reinforcement Learning based Approach
- Authors: Sijie He, Ziye Jia, Chao Dong, Wei Wang, Yilu Cao, Yang Yang, and
Qihui Wu
- Abstract summary: This paper focuses on the routing plan and recovery for UAV networks with attacks.
A deliberate attack model based on the importance of nodes is designed to represent enemy attacks.
An intelligent algorithm based on reinforcement learning is proposed to recover the routing path when UAVs are attacked.
- Score: 23.317947964385613
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The unmanned aerial vehicle (UAV) network is popular these years due to its
various applications. In the UAV network, routing is significantly affected by
the distributed network topology, leading to the issue that UAVs are vulnerable
to deliberate damage. Hence, this paper focuses on the routing plan and
recovery for UAV networks with attacks. In detail, a deliberate attack model
based on the importance of nodes is designed to represent enemy attacks. Then,
a node importance ranking mechanism is presented, considering the degree of
nodes and link importance. However, it is intractable to handle the routing
problem by traditional methods for UAV networks, since link connections change
with the UAV availability. Hence, an intelligent algorithm based on
reinforcement learning is proposed to recover the routing path when UAVs are
attacked. Simulations are conducted and numerical results verify the proposed
mechanism performs better than other referred methods.
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