Neutrosophic Set and Machine Learning Model for Identifying Botnet Attacks on IoT Effectively

Authors

  • Wasal S AL-Bash AL-Azzawi Computer Engineering Technology, Al-Salam University College, Baghdad, Iraq
  • Hassan W. Hilou Computer Engineering Techniques, Al-Ma'moon University College, Baghdad, Iraq
  • Nawfal H. warush Mechanical Engineering, Al-Nahrain University, Baghdad, Iraq
  • Hasan Meslmani Medical Instrumentation Techniques Engineering Department, College of Engineering Technology, Ashur University, Baghdad Iraq
  • Ahmed A El-Douh Applied Science Research Center, Applied Science Private University, Amman; Information Systems Department, Faculty of Information Systems and Computer Science, October 6 University, Giza, 12585, Egypt
  • Ahmed Abdelhafeez Applied Science Research Center, Applied Science Private University, Amman; University, Giza, 12585, Egypt 7Computer Science Department, Faculty of Information Systems and Computer Science, October 6 University, Giza, 12585, Egypt

Abstract

 Botnet attacks, in which attackers utilize reciprocal communications between IoT 
devices to undertake extensive harmful actions, are one of the most significant risks in WSNs. In 
this sense, advancements in the realm of dependable and effective defenses against this kind of 
threat—specifically, trustworthy techniques for detecting, recognizing, and thwarting botnet 
attacks—are becoming more and more significant and pertinent. This work offers a thorough 
analysis that successfully detects botnet assaults on the Internet of Things by using machine 
learning techniques, including Random Forest and LSTM. These algorithms are examined, 
contrasted, and demonstrated to be very successful in identifying intricate patterns suggestive of 
botnet activity, leading to a notable enhancement in IoT security. The goal of the study is to help 
solve the issue of WSN and IoT security in general. The neutrosophic set is used in this study to 
overcome uncertainty information. We triangular neutrosophic model to select the best model. 
The results show RF is the best compared to other models. 

 

DOI: 10.5281/zenodo.15717644

Downloads

Download data is not yet available.

Downloads

Published

2025-09-01

How to Cite

Wasal S AL-Bash AL-Azzawi, Hassan W. Hilou, Nawfal H. warush, Hasan Meslmani, Ahmed A El-Douh, & Ahmed Abdelhafeez. (2025). Neutrosophic Set and Machine Learning Model for Identifying Botnet Attacks on IoT Effectively . Neutrosophic Sets and Systems, 87, 742-750. https://fs.unm.edu/nss8/index.php/111/article/view/6588

Most read articles by the same author(s)

1 2 > >>