Visible to the public Biblio

Filters: Keyword is software-defined network (SDN)  [Clear All Filters]
2023-01-13
Krishna, P. Vamsi, Matta, Venkata Durga Rao.  2022.  A Unique Deep Intrusion Detection Approach (UDIDA) for Detecting the Complex Attacks. 2022 International Conference on Edge Computing and Applications (ICECAA). :557—560.
Intrusion Detection System (IDS) is one of the applications to detect intrusions in the network. IDS aims to detect any malicious activities that protect the computer networks from unknown persons or users called attackers. Network security is one of the significant tasks that should provide secure data transfer. Virtualization of networks becomes more complex for IoT technology. Deep Learning (DL) is most widely used by many networks to detect the complex patterns. This is very suitable approaches for detecting the malicious nodes or attacks. Software-Defined Network (SDN) is the default virtualization computer network. Attackers are developing new technology to attack the networks. Many authors are trying to develop new technologies to attack the networks. To overcome these attacks new protocols are required to prevent these attacks. In this paper, a unique deep intrusion detection approach (UDIDA) is developed to detect the attacks in SDN. Performance shows that the proposed approach is achieved more accuracy than existing approaches.
2022-01-10
Sudar, K.Muthamil, Beulah, M., Deepalakshmi, P., Nagaraj, P., Chinnasamy, P..  2021.  Detection of Distributed Denial of Service Attacks in SDN using Machine learning techniques. 2021 International Conference on Computer Communication and Informatics (ICCCI). :1–5.
Software-defined network (SDN) is a network architecture that used to build, design the hardware components virtually. We can dynamically change the settings of network connections. In the traditional network, it's not possible to change dynamically, because it's a fixed connection. SDN is a good approach but still is vulnerable to DDoS attacks. The DDoS attack is menacing to the internet. To prevent the DDoS attack, the machine learning algorithm can be used. The DDoS attack is the multiple collaborated systems that are used to target the particular server at the same time. In SDN control layer is in the center that link with the application and infrastructure layer, where the devices in the infrastructure layer controlled by the software. In this paper, we propose a machine learning technique namely Decision Tree and Support Vector Machine (SVM) to detect malicious traffic. Our test outcome shows that the Decision Tree and Support Vector Machine (SVM) algorithm provides better accuracy and detection rate.
2020-03-18
Mei, Lei, Tong, Haojie, Liu, Tong, Tian, Ye.  2019.  PSA: An Architecture for Proactively Securing Protocol-Oblivious SDN Networks. 2019 IEEE 9th International Conference on Electronics Information and Emergency Communication (ICEIEC). :1–6.

Up to now, Software-defined network (SDN) has been developing for many years and various controller implementations have appeared. Most of these controllers contain the normal business logic as well as security defense function. This makes the business logic on the controller tightly coupled with the security function, which increases the burden of the controller and is not conducive to the evolution of the controller. To address this problem, we propose a proactive security framework PSA, which decouples the business logic and security function of the controller, and deploys the security function in the proactive security layer which lies between the data plane and the control plane, so as to provide a unified security defense framework for different controller implementations. Based on PSA, we design a security defense application for the data-to-control plane saturation attack, which overloads the infrastructure of SDN networks. We evaluate the prototype implementation of PSA in the software environments. The results show that PSA is effective with adding only minor overhead into the entire SDN infrastructure.