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Autori principali: He, Lijun, Jia, Ziye, Wang, Juncheng, Wang, Feng, Lansard, Erick, Yuen, Chau
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2401.06419
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author He, Lijun
Jia, Ziye
Wang, Juncheng
Wang, Feng
Lansard, Erick
Yuen, Chau
author_facet He, Lijun
Jia, Ziye
Wang, Juncheng
Wang, Feng
Lansard, Erick
Yuen, Chau
contents In Earth Observation Satellite Networks (EOSNs) with a large number of battery-carrying satellites, proper power allocation and task scheduling are crucial to improving the data offloading efficiency. As such, we jointly optimize power allocation and task scheduling to achieve energy-efficient data offloading in EOSNs, aiming to balance the objectives of reducing the total energy consumption and increasing the sum weights of tasks. First, we derive the optimal power allocation solution to the joint optimization problem when the task scheduling policy is given. Second, leveraging the conflict graph model, we transform the original joint optimization problem into a maximum weight independent set problem when the power allocation strategy is given. Finally, we utilize the genetic framework to combine the above special solutions as a two-layer solution for the joint optimization problem. Simulation results demonstrate that our proposed solution can properly balance the sum weights of tasks and the total energy consumption, achieving superior system performance over the current best alternatives.
format Preprint
id arxiv_https___arxiv_org_abs_2401_06419
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Energy-Efficient Data Offloading for Earth Observation Satellite Networks
He, Lijun
Jia, Ziye
Wang, Juncheng
Wang, Feng
Lansard, Erick
Yuen, Chau
Optimization and Control
Signal Processing
In Earth Observation Satellite Networks (EOSNs) with a large number of battery-carrying satellites, proper power allocation and task scheduling are crucial to improving the data offloading efficiency. As such, we jointly optimize power allocation and task scheduling to achieve energy-efficient data offloading in EOSNs, aiming to balance the objectives of reducing the total energy consumption and increasing the sum weights of tasks. First, we derive the optimal power allocation solution to the joint optimization problem when the task scheduling policy is given. Second, leveraging the conflict graph model, we transform the original joint optimization problem into a maximum weight independent set problem when the power allocation strategy is given. Finally, we utilize the genetic framework to combine the above special solutions as a two-layer solution for the joint optimization problem. Simulation results demonstrate that our proposed solution can properly balance the sum weights of tasks and the total energy consumption, achieving superior system performance over the current best alternatives.
title Energy-Efficient Data Offloading for Earth Observation Satellite Networks
topic Optimization and Control
Signal Processing
url https://arxiv.org/abs/2401.06419