A Machine Learning Based Detection and Mitigation of the DDOS Attack by Using SDN Controller Framework

被引:0
|
作者
M. Revathi
V. V. Ramalingam
B. Amutha
机构
[1] SRM Institute of Science and Technology,Department of Computer Science and Engineering
关键词
Software-defined networking; DDoS attack; Spark standardization technique; Semantic multilinear component analysis; Discrete scalable memory based support vector machine algorithm; Mininet; RYU controller;
D O I
暂无
中图分类号
学科分类号
摘要
Recently, SDN has arisen as a new network platform that offers unparalleled programming that enables network operators to dynamically customize and control their networks. The attackers aim to paralyse the logical plane, the brain of the network that offers several advantages, by using the SDN controller. However, the control plane is the desirable target of security attacks on the opponents because of its characteristics. One of the most common threats is the DDOS attacks to drain network capacity by sending them heavy traffic, causing network congestion. SDN is a common area of investigation for SDN defenceand DDoS threat identification and prevention in the SDN context has been introduced to many researchers since the proposed SDN attacks. Nevertheless, security risks must be adequately secured. In this paper we suggest a discrete scalable memory based support vector machine algorithm for DDoS threat and SDN mitigation architecture for attack detection. By starting the process of attack detection the input data can gets pre-processed by using Spark standardization technique in which the missing values are replaced and the unwanted data are removed. Then the feature extractions are done using semantic multilinear component analysis algorithm. The classifier is responsible for predicting target and for this a novel discrete scalable memory based support vector machine (DSM-SVM) algorithm is used which provides high accuracy of attack prediction. Followed by attack detection the mitigation process was done, here the mitigation server can identify the threat by intelligently dropping malicious bot traffic and absorbing the rest of the traffic. Here the suggested mechanism achieves attack traffic mitigation and benign traffic dropping. We have evaluated the whole process on KDD dataset. The proposed network model was trained and then used in an SDN threat detection and mitigation environment as part of the assessment process. The entire experiment is run on a VMware-based Ubuntu virtual machine. Weka will utilize our suggested classifier model for training and evaluation, while Mininet uses a RYU controller to establish an SD Network. The findings demonstrate that the mechanism presented exceeds the other algorithms examined, by expressing 99.7% accuracy especially concerning training and testing time over KDD dataset.
引用
收藏
页码:2417 / 2441
页数:24
相关论文
共 50 条
  • [1] A Machine Learning Based Detection and Mitigation of the DDOS Attack by Using SDN Controller Framework
    Revathi, M.
    Ramalingam, V. V.
    Amutha, B.
    [J]. WIRELESS PERSONAL COMMUNICATIONS, 2022, 127 (03) : 2417 - 2441
  • [2] DDoS Attack Detection and Mitigation in SDN using Machine Learning
    Khashab, Fatima
    Moubarak, Joanna
    Feghali, Antoine
    Bassil, Carole
    [J]. PROCEEDINGS OF THE 2021 IEEE 7TH INTERNATIONAL CONFERENCE ON NETWORK SOFTWARIZATION (NETSOFT 2021): ACCELERATING NETWORK SOFTWARIZATION IN THE COGNITIVE AGE, 2021, : 395 - 401
  • [3] RMCARTAM For DDoS Attack Mitigation in SDN Using Machine Learning
    Revathi, M.
    Ramalingam, V.V.
    Amutha, B.
    [J]. Computer Systems Science and Engineering, 2023, 45 (03): : 3023 - 3036
  • [4] A DDoS Attack Mitigation Scheme in ISP Networks Using Machine Learning Based on SDN
    Nguyen Ngoc Tuan
    Pham Huy Hung
    Nguyen Danh Nghia
    Nguyen Van Tho
    Trung Van Phan
    Nguyen Huu Thanh
    [J]. ELECTRONICS, 2020, 9 (03)
  • [5] DDoS Attacks Detection and Mitigation in SDN using Machine Learning
    Rahman, Obaid
    Quraishi, Mohammad Ali Gauhar
    Lung, Chung-Horng
    [J]. 2019 IEEE WORLD CONGRESS ON SERVICES (IEEE SERVICES 2019), 2019, : 184 - 189
  • [6] Enhancing DDoS Attack Detection and Mitigation in SDN Using an Ensemble Online Machine Learning Model
    Alashhab, Abdussalam Ahmed
    Zahid, Mohd Soperi
    Isyaku, Babangida
    Elnour, Asma Abbas
    Nagmeldin, Wamda
    Abdelmaboud, Abdelzahir
    Abdullah, Talal Ali Ahmed
    Maiwada, Umar Danjuma
    [J]. IEEE ACCESS, 2024, 12 : 51630 - 51649
  • [7] FMDADM: A Multi-Layer DDoS Attack Detection and Mitigation Framework Using Machine Learning for Stateful SDN-Based IoT Networks
    Khedr, Walid I.
    Gouda, Ameer E.
    Mohamed, Ehab R.
    [J]. IEEE ACCESS, 2023, 11 : 28934 - 28954
  • [8] IoT-Based DDoS Attack Detection and Mitigation Using the Edge of SDN
    Yang, Yinqi
    Wang, Jian
    Zhai, Baoqin
    Liu, Jiqiang
    [J]. CYBERSPACE SAFETY AND SECURITY, PT II, 2019, 11983 : 3 - 17
  • [9] DDoS attack detection in SDN: Enhancing entropy-based detection with machine learning
    Santos-Neto, Marcos J.
    Bordim, Jacir L.
    Alchieri, Eduardo A. P.
    Ishikawa, Edison
    [J]. CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE, 2024, 36 (11):
  • [10] Time-based DDoS Detection and Mitigation for SDN Controller
    Dharma, I. Gde N.
    Muthohar, M. Fiqri
    Prayuda, Alvin J. D.
    Priagung, K.
    Choi, Deokjai
    [J]. 2015 17TH ASIA-PACIFIC NETWORK OPERATIONS AND MANAGEMENT SYMPOSIUM APNOMS, 2015, : 550 - 553