Rl based network deployment and resource management solutions for opportunistic wireless access for aerial networks in disaster areas and smart city applications

dc.contributor.advisor Canberk, Berk
dc.contributor.author Ariman, Mehmet
dc.contributor.authorID 504162503
dc.contributor.department Computer Engineering
dc.date.accessioned 2025-06-04T05:53:58Z
dc.date.available 2025-06-04T05:53:58Z
dc.date.issued 2023-08-09
dc.description Thesis (Ph.D.) -- Istanbul Technical University, Graduate School, 2023
dc.description.abstract The growth in the mobile communication area changed the data traffic profile. In addition, the requirement for the deployed infrastructure has significantly changed. The available bandwidth and IP transformation in the mobile backend increased the peak traffic requirements, while the mobile nature of the users changed the required infrastructure over time. The commercial availability of unmanned aerial vehicles potentially addresses requirements changes within the infrastructure. However, its three-dimensional nature and operation range limitations due to limited battery introduce new problems. Topology control is a significant problem for unmanned aerial vehicle networks. The optimization of the network size for coverage is identical to the minimum set-cover problem. The minimum set-cover problem is NP-hard, even without the service-level agreements enforced within the communication networks. The solution sets provided for tailor-made applications prevent the scalability of aerial networks. The tailor-made solutions require the exact development cost for each new application target. Reinforcement learning provides an ideal solution for addressing requirements for multiple applications with a single development effort. The integration cost depends on data availability for training in reinforcement learning-based deployments. To this end, reinforcement learning is integrated into a central software-defined networking-based control entity to demonstrate the deployment cycle of the aerial network. In addition, the solution's effectiveness is proved by comparing the quality of service, coverage, and power consumption results with existing literature. Furthermore, the application area of the reinforcement learning is extended to wireless channel selection to address the physical resource assignment problem. The development cost of the model has been the availability of the data. The integration of the new application is demonstrated in the simulation tool to measure the cost. In addition, smart-city application for the aerial network in distributed architecture is simulated with this implementation. Overall, this thesis conducts a survey of the existing literature on the challenges of aerial networks. In addition, the reinforcement learning integration tool is developed in a simulation format. Finally, the disaster area and smart-city applications are implemented to measure the applicability of the hypothesis. The comparison results revealed that reinforcement learning-based aerial network topology control provides scalable performance for power consumption while satisfying the quality of service and coverage requirements of the network. In addition, the improvements in the physical resource allocation for opportunistic access on the wireless medium is proved in wireless channel selection deployment for the smart-city application.
dc.description.degree Ph.D.
dc.identifier.uri http://hdl.handle.net/11527/27292
dc.language.iso en_US
dc.publisher Graduate School
dc.sdg.type Goal 4: Quality Education
dc.sdg.type Goal 9: Industry, Innovation and Infrastructure
dc.sdg.type Goal 11: Sustainable Cities and Communities
dc.subject Computer network protocols
dc.subject Bilgisayar ağ protokolleri
dc.subject Computer networks
dc.subject Bilgisayar ağları
dc.subject Smart city
dc.subject Akıllı şehir
dc.title Rl based network deployment and resource management solutions for opportunistic wireless access for aerial networks in disaster areas and smart city applications
dc.title.alternative Felaket alanları ve akıllı şehir uygulamalarında uçan fırsatçı kablosuz erişim ağları için takviyeli öğrenme tabanlı ağ oluşturma ve kaynak yönetimi çözümleri
dc.type Doctoral Thesis
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