1 results listed
Our understanding of road safety and efficiency
has completely changed as a result of the introductiomn and evolution of autonomous vehicles (AVs) into transportation systems.
AVs can organize and control the movements of the vehicles and
react dynamically to traffic problems by utilizing the Internet of
Vehicles (IoV) to make easier to identify the real-time communication between cars and infrastructure. They are vulnerable
to cyberattacks, especially Distributed Denial of Service (DDoS)
attacks, because they are connected to the networks in high
degree. These assaults have the potential to seriously collapse
the traffic,and interupt with communication, and decrease the
safety.In order to meet the high demand for AVs to have a more
flexible cybersecurity solution, this study presents the DDoS
Attack Detection System (DADS) using hybrid detection model.
A Hybrid Detection Model (HDM) serves as the foundation for
DADS. To detect the complex attack patterns, the HDM uses a
variety of classification machine learning techniques, including
Random Forest, Adaboost, Naive Bayes, K-Nearest Neighbors
(KNN), and decision trees. Together, these algorithms monitors
the network traffic and differentiate between benign and malicious behavior.This increases the system’s performance and that
is applicable in dynamic contexts by enabling it to recognize
and react in real time to zero-day vulnerabilities and new DDoS
attacks.The CIC-DDoS2019 dataset, a well-known benchmark
for DDoS attack scenarios, and simulations carried out in SUMO
(Simulation of Urban Mobility) were used to test the system. The
results showed that DADS is a potential solution as it achieves
high detection accuracy and offers a robust defense mechanism
against both known and unknown DDoS threats in vehicle networks.
International Conference on Advanced Technologies, Computer Engineering and Science
ICATCES
Rishika S
Senthilprabha R