Detection of IoT Cyberattacks in Smart Cities using Deep Neural Networks – Zeru Kifle Kebede
Zeru Kifle Kebede
Master's thesis
Detection of IoT Cyberattacks in Smart Cities using Deep Neural Networks
Abstract:
Nowadays, IoT and smart cities are increasingly becoming popular topics among both researchers and practitioners. IoT applications are the main backbone for building a smart city. Many governments use IoT applications to provide better services for their citizens, and other non-governmental organizations also use them to provide better services and products for their customers. Moreover, the day-to …moreAbstract:
Nowadays, IoT and smart cities are increasingly becoming popular topics among both researchers and practitioners. IoT applications are the main backbone for building a smart city. Many governments use IoT applications to provide better services for their citizens, and other non-governmental organizations also use them to provide better services and products for their customers. Moreover, the day-to …more
Language used: English
Date on which the thesis was submitted / produced: 30. 4. 2023
Accessible from:: 31. 12. 2999
Thesis defence
- Supervisor: prof. Ing. Petr Hájek, Ph.D.
Citation record
ISO 690-compliant citation record:
KEBEDE, Zeru Kifle. \textit{Detection of IoT Cyberattacks in Smart Cities using Deep Neural Networks}. Online. Master's thesis. Pardubice: University of Pardubice, Faculty of Economics and Administration. 2023. Available from: https://theses.cz/id/z5jqdi/.
The right form of listing the thesis as a source quoted
Kebede, Zeru Kifle. Detection of IoT Cyberattacks in Smart Cities using Deep Neural Networks. Pardubice, 2023. diplomová práce (Ing.). Univerzita Pardubice. Fakulta ekonomicko-správní
Full text of thesis
Accessibility: Autor si nepřeje zpřístupnění práce veřejnosti
Contents of on-line thesis archive
Published in Theses:- Soubory jsou nedostupné.
Other ways of accessing the text
Institution archiving the thesis and making it accessible: Univerzita Pardubice, Fakulta ekonomicko-správníUniversity of Pardubice
Faculty of Economics and AdministrationMaster programme / field:
Informatics and System Engineering / Informatics in Public Administration
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