Shitong Ye’s scientific contributions

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Publications (1)


Schematic diagram of current node selection candidate node.
Schematic diagram of vehicle network packet transmission route.
Obtaining Q value through deep network.
Total energy consumption of system transmission.
System transmission packet loss rate.

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Vehicle-Mounted Self-Organizing Network Routing Algorithm Based on Deep Reinforcement Learning
  • Article
  • Full-text available

July 2021

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81 Reads

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13 Citations

Wireless Communications and Mobile Computing

Shitong Ye

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Lijuan Xu

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Xiaomin Li

Through the research on the vehicle-mounted self-organizing network, in view of the current routing technical problems of the vehicle-mounted self-organizing network under the condition of no roadside auxiliary communication unit cooperation, this paper proposes a vehicle network routing algorithm based on deep reinforcement learning. For the problems of massive vehicle nodes and multiple performance evaluation indexes in vehicular ad hoc network, this paper proposes a time prediction model of vehicle communication to reduce the probability of communication interruption and proposes the routing technology of vehicle network by studying the deep reinforcement learning method. This technology can quickly select routing nodes and plan the optimal route according to the required performance evaluation indicators.

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Citations (1)


... Some researchers have explored variants of Q-learning, such as Deep Q-Networks (DQN). In [118], a deep reinforcement learning-based vehicle net-work routing algorithm was proposed, which includes a time prediction model for vehicle communication to reduce the probability of communication interruptions. The study investigates deep reinforcement learning methods to address issues in vehicular ad hoc networks, including massive vehicle nodes and multiple performance evaluation indexes. ...

Reference:

Routing protocols strategies for flying Ad-Hoc network (FANET): Review, taxonomy, and open research issues
Vehicle-Mounted Self-Organizing Network Routing Algorithm Based on Deep Reinforcement Learning

Wireless Communications and Mobile Computing