Learning-aided real-time performance optimisation of cognitive UAV-assisted disaster communication

IEEE Global Communications Conference(2021)

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摘要
In this work, we propose efficient optimisation methods for relay-assisted unmanned aerial vehicles (UAVs) in cognitive radio networks (CRNs) to cope with the network destruction in the event of a natural disaster. Our model considers real- time optimisation in embedded UAV-CRN communication involved in recovering wireless communication services. Particularly, by conceiving advanced optimisation techniques and training deep neural networks, our solutions become capable of supporting real-time applications in disaster recovery scenarios. Our algorithms impose low computational complexity, hence, have a low execution time in solving real- time optimisation problems. Numerical results demonstrate the benefits of our approaches proposed for UAV-CRN.
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关键词
disaster recovery scenarios,low execution time,real- time optimisation problems,cognitive UAV-assisted disaster communication,efficient optimisation methods,relay-assisted unmanned aerial vehicles,UAVs,cognitive radio networks,network destruction,natural disaster,embedded UAV-CRN communication,wireless communication services,learning-aided realtime performance optimisation,deep neural networks,low computational complexity
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