학술논문

AI-Powered Detection and Mitigation of Backdoor Attacks on Databases Server
Document Type
Conference
Source
2024 2nd International Conference on Intelligent Data Communication Technologies and Internet of Things (IDCIoT) Intelligent Data Communication Technologies and Internet of Things (IDCIoT), 2024 2nd International Conference on. :374-379 Jan, 2024
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Technological innovation
Protocols
Machine learning algorithms
Machine learning
Implants
Malware
Servers
Backdoor Attack
Database Server
Illegal access
Infrastructure
Ensemble Machine Learning
Technology
SQL Query
Language
Abstract
A malicious act known as a backdoor attack occurs when an attacker takes advantage of system weaknesses in order to obtain unauthorized access. This requires modifying the network and the authentication protocols in order to implant malicious code, so establishing an access point for activities that are not permitted. It is important to do early detection of backdoor attacks in order to avert significant damage. A proactive defense involves the detection of abnormalities in the behavior of the network before the progression of suspicious operations. Timely innovation improves the resilience of a cybersecurity system, therefore protecting systems and data against illegal access and the possibility of breaches. This research study offers insightful methodology on the detection of backdoor attacks, with a focus on preventative security measures. Strong early detection can be achieved by using ensemble machine learning at the network-database interface. This helps to prevent unwanted access and rectify SQL queries faultlessly. This work strengthens the resiliency of cybersecurity by adding to a complete knowledge of combating backdoor attacks for effective threat management. To develop good Machine learning algorithm dataset is an essential component and in the process of discovering backdoor intrusions. Becaus e of the variety of situations it presents, accurate testing of detection technologies is made possible. The use of ensemble machine learning on datasets like UNSW-NB15 improves the accuracy of backdoor attack detection, which contributes to the development of a complete and efficient cybersecurity plan.