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Publikace:
Detection of IoT Cyberattacks in Smart Cities using Deep Neural Networks

Diplomová práceopen access
dc.contributor.advisorHájek, Petr
dc.contributor.authorKebede, Zeru Kifle
dc.contributor.refereeHub, Miloslav
dc.date.accepted2023-06-07
dc.date.accessioned2023-08-15T07:58:39Z
dc.date.available2023-08-15T07:58:39Z
dc.date.issued2023
dc.date.submitted2023-04-30
dc.description.abstractNowadays, 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-day activities of society and device interactions in a smart city are carried out over IoT applications. Conversely, new and intelligent attacks are greatly increasing due to the behavior of these applications. As a result, security becomes one of the most crucial concerns that need to be addressed. To date, several intrusion detection models have been proposed by several researchers for ensuring the security of IoT devices in the smart city. In this thesis, I proposed deep neural network-based models MLP, LSTM, and GRU for detecting binary and muti-class IoT cyber attacks, using an imbalanced big data set. The most recent datasets, UNSW-NB15 and CICIDS 2017, were used for model training and evaluation, which are enhanced by a variety of recently added cyber attacks. The experimental results for the UNSW-NB15 dataset show that the MLP model outperformed other models in terms of recall, precision, F1-score, and FPR (false positive rate) with values of 99.17%, 99.17%, 99.17%, and 0.0037, respectively. Furthermore, the LSTM model achieved a higher accuracy of 99.26%. In the case of conventional and ensemble models, Random Forest outclasses other models with respect to all metrics when trained and evaluated with the UNSW-NB15 dataset. Further, when the dataset CICIDS2017 was used for training and evaluating the Random Forest model, it outperformed other conventional and ensemble methods. Among the deep neural network models, the MLP model classified attacks with the accuracy of 98.10%, precision of 98.20%, F1-score of 98.12%, and FPR of 0.0202, which makes it the best-performing deep learning model.eng
dc.description.defenceThe student defended master thesis named: Detection of IoT Cyberattacks in Smart Cities using Deep Neural Networks. Aim of thesis is to summarize existing approaches to detecting IoT cyber-attacks, propose a DNN-based model for detecting IoT cyber-attacks, validate the model using datasets relevant to smart cities, and discuss implications of the results for smart cities. Questions and suggestions for defense by supervisor and reviewer Deep learning models detect most cyber-attacks with high accuracy. However, some attacks have proven to be resistant to detection. Try to explain these results. What are the implications of further IoT expansion for cyber-attack detection? The quantitative indicators on page 42 indicate that you give equal weight to False Positive (FP) and False Negative (FN) errors, while the consequences of these errors are very different. How do you deal with this fact? Based on your work, can you formulate any security measures that will reduce the risk of some IoT attacks being successful? The student responded to the commissions questions.eng
dc.description.departmentFakulta ekonomicko-správnícze
dc.description.gradeDokončená práce s úspěšnou obhajoboucze
dc.format83 s.
dc.identifier.stag45519
dc.identifier.urihttps://hdl.handle.net/10195/81631
dc.language.isoeng
dc.publisherUniverzita Pardubicecze
dc.rightsBez omezení
dc.subjectIoTeng
dc.subjectCyber Attackeng
dc.subjectSmart Cityeng
dc.subjectAttack Detectioneng
dc.subjectDeep Learningeng
dc.subjectBig Dataeng
dc.thesis.degree-disciplineInformatics in Public Administrationcze
dc.thesis.degree-grantorUniverzita Pardubice. Fakulta ekonomicko-správnícze
dc.thesis.degree-nameIng.
dc.thesis.degree-programInformatics and System Engineeringcze
dc.titleDetection of IoT Cyberattacks in Smart Cities using Deep Neural Networkseng
dc.typediplomová prácecze
dspace.entity.typePublication

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