Myonghun Han’s scientific contributions

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Publications (1)


Figure 1. Overall flowchart of the Dueling-DQN-based routing algorithm.
Routing algorithm research related to reinforcement learning.
Algorithm's hardware resource usage.
An FPGA-Accelerated CNN with Parallelized Sum Pooling for Onboard Realtime Routing in Dynamic Low-Orbit Satellite Networks
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June 2024

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16 Reads

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1 Citation

Electronics

Hyeonwoo Kim

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Juhyeon Park

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Heoncheol Lee

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Myonghun Han

This paper addresses the problem of real-time onboard routing for dynamic low earth orbit (LEO) satellite networks. It is difficult to apply general routing algorithms to dynamic LEO networks due to the frequent changes in satellite topology caused by the disconnection between moving satellites. Deep reinforcement learning (DRL) models trained by various dynamic networks can be considered. However, since the inference process with the DRL model requires too long a computation time due to multiple convolutional layer operations, it is not practical to apply to a real-time on-board computer (OBC) with limited computing resources. To solve the problem, this paper proposes a practical co-design method with heterogeneous processors to parallelize and accelerate a part of the multiple convolutional layer operations on a field-programmable gate array (FPGA). The proposed method was tested with a real heterogeneous processor-based OBC and showed that the proposed method was about 3.10 times faster than the conventional method while achieving the same routing results.

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Citations (1)


... In [67], the authors address the problem of accelerating Deep reinforcement learning (DRL) models onboard satellites. The application addressed concerns about the onboard real-time routing for dynamic low Earth orbit (LEO) satellite networks. ...

Reference:

Review on Hardware Devices and Software Techniques Enabling Neural Network Inference Onboard Satellites
An FPGA-Accelerated CNN with Parallelized Sum Pooling for Onboard Realtime Routing in Dynamic Low-Orbit Satellite Networks

Electronics