Description
This book presents a proof of concept architecture to detect and prevent Sybil attacks in automated Machine-to-Machine networks. Designed in regards to low-powered Internet of Things devices, the proposed layered defence balances security with computational feasibility, using Distributed Ledger Technology and Multi-Agent Systems. The thesis begins with the theoretical background of the used technologies and related work, which the methodology is based on. Using the Design Science Research framework, the methodology explains the process of building the simulation, its layers and the combined approach, followed by the results which are compared and discussed. The results show that a multi-layered approach reduces false positives and offers a more balanced detection framework compared to the isolated methods. The thesis concludes by discussing the framework's scalability, limitations and future research directions for securing decentralized payment systems.
Introduction.- Literature Review.- Research Design.- Methodology.- Implementation.- Results and Analysis.- Discussion.- Conclusion.
Karen Ayu Stiller is a graduate of the Frankfurt School of Finance & Management Master in Management program. Her research focuses on IT Security in financial transaction systems, highlighting intrusion detection and automatic payments.



