Deep Learning Based Security Schemes for IoT Applications: A Review

Authors

  • Mina Othman Erbil Polytechnic university
  • Prof. Dr. Shavan Askar Erbil Polytechnic University
  • Daban Ali Erbil Polytechnic University
  • Media Ali Ibrahim

DOI:

https://doi.org/10.33022/ijcs.v13i2.3839

Keywords:

Artificial Intelligence (AI), Security, IoT

Abstract

Due to its widespread perception as a crucial element of the Internet of the future, the Internet of Things (IoT) has garnered a lot of attention in recent years. The Internet of Things (IoT) is made up of billions of sentients, communicative "things" that expand the boundaries of the physical and virtual worlds. Every day, such widely used smart gadgets generate enormous amounts of data, creating an urgent need for rapid data analysis across a range of smart mobile devices. Thankfully, current developments in deep learning have made it possible for us to solve the issue tastefully. Deep models may be built to handle large amounts of sensor data and rapidly and effectively learn underlying properties for a variety of Internet of Things applications on smart devices. We review the research on applying deep learning to several Internet of Things applications in this post. Our goal is to provide insights into the many ways in which deep learning techniques may be used to support Internet of Things applications in four typical domains: smart industrial, smart home, smart healthcare, and smart transportation. One of the main goals is to seamlessly integrate deep learning and IoT, leading to a variety of novel ideas in IoT applications, including autonomous driving, manufacture inspection, intelligent control, indoor localization, health monitoring, disease analysis, and home robotics. We also go over a number of problems, difficulties, and potential avenues for future study that make use of deep learning (DL), which is turning out to be one of the most effective and appropriate methods for dealing with various IoT security concerns. The goal of recent research has been to enhance deep learning algorithms for better Internet of Things security. This study examines deep learning-based intrusion detection techniques, evaluates the effectiveness of several deep learning techniques, and determines the most effective approach for deploying intrusion detection in the Internet of Things. This study uses Deep Learning (DL) approaches to better expand intelligence and application skills by using the large quantity of data generated or acquired. The many IoT domains have drawn the attention of several academics, and both DL and IoT approaches have been explored. Because DL was designed to handle a variety of data in huge volumes and required processing in virtually real-time, it was indicated by several studies as a workable method for handling data generated by IoT.

Author Biography

Prof. Dr. Shavan Askar, Erbil Polytechnic University

Dr. Shavan Askar (Professor of Computer Networks since 15/3/2023). He received his PhD degree in Electronic Systems Engineering from the University of Essex\UK in 2012. He obtained his MSc (2003) and BSc (2001, Ranked 1st on the college) degrees from the Control and Systems Engineering Dept. Baghdad. Dr. Askar works in the field of Networks that includes Internet of Things, Software Defined Networks, Optical Networks, and 5G. Dr. Askar has started his academic career in 2003 when he was appointed as a lecturer at the University of Duhok Iraq until 2008 when he was granted a scholarship to do his PhD degree that commenced in October 2008 and finished successfully in June 2012. Dr. Askar then returned to Iraq to pursue his academic career at the University of Duhok for the period 2012-2016 by supervising master students, teaching post-gradatue courses, and became project manager of so many strategic projects in Kurdistan. In 2016, Dr. Askar joined Duhok Polytechnic University as the Director General of Scientific Research Center, his role includes apart from teaching post-graduate students, contributing to the development of the university from the technological and scientific perspectives. Since 2017, Dr. Askar beside his DPU job is working as an Adjunct Professor at the American University of Kurdistan, he contributed into the establishment of a new program called Electronic and Telecommunications Engineering\College of Engineering, he teaches different courses in this program. Dr. Askar has more than 95 scientific research papers, some of his papers were published in very prestigious conferences such as OFC and ECOC and high impact factor journals. While he was in UK, he worked as a Researcher in two European projects; MAINS project (Metro Architecture enabling Sub wavelengths) and ADDONAS project (Active Distributed and Dynamic Optical Network Access

Published

08-04-2024