Graduate papers
  
Description of the graduate paper
Form of studies Master
Title of the study programm Business Informatics
Title in original language Lietu interneta botu identificēšana, izmantojot reāllaika datu analītiku.
Title in English Internet of Things Bot Detection Using Real-Time Data Analysis
Department Faculty Of Computer Science Information Tehnology And Energy
Scientific advisor Rūta Pirta-Dreimane
Reviewer Andrejs Zujevs
Abstract The Internet of Things (IoT) has become a well known concept in the world of technology. The usage of IoT devices have increased within the recent years making it more susceptible to distributed malware and attacks. Securing IoT devices and systems have become a challenge due to difficulty in monitoring and intrusion detection in complex IoT networks. The behavior of common attacks made by botnets are analyzed. This paper proposes two solutions which are Machine learning approach and Rule based approach that analyzes traffic in an IoT network, detects suspicious traffic and alerts the user. For the ML approach the paper has four models trained and tested using a Ddos dataset. This document will have a total on 73 pages, 18 tables, 34 figures and 5 pages of source of reference.
Keywords Keywords: Internet of Things (IoT), Network Security, Denial of Service (DoS) Attacks, Intrusion Detection Systems (IDS), Local Area Network (LAN), Transmission Control Protocol (TCP), Domain Name System (DNS), Transport Layer System (TLS).
Keywords in English Keywords: Internet of Things (IoT), Network Security, Denial of Service (DoS) Attacks, Intrusion Detection Systems (IDS), Local Area Network (LAN), Transmission Control Protocol (TCP), Domain Name System (DNS), Transport Layer System (TLS).
Language eng
Year 2024
Date and time of uploading 24.05.2024 00:59:59