An Efficient Intrusion Detection and Prevention System for DDOS Attack in WSN Using SS-LSACNN and TCSLR

Vikash Kumar Singh, D. Sivashankar, Kishlay Kundan, Sushmita Kumari
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Abstract

Sensor Nodes (SNs) are utilized by Wireless Sensor Networks (WSNs) to recognize their environment; in addition, the WSN delivers data from sensing nodes to the sink. The WSNs are exposed to several security threats owing to the broadcast performance of transmission along with the increase in the growth of application regions. Countermeasures like Intrusion Detection and Prevention Systems (IDPS) should be adopted to overcome the aforementioned attacks. By implementing these systems, several intrusions can be detected in WSN; also, WSN can be prevented from various security attacks. Therefore, identifying the general attack that influences the SNs mentioned as Distributed Denial of Service (DDoS) attack and recuperating the data utilizing Soft Swish (SS)-Linear Scaling-centered Adam Convolution Neural Network (SS-LSACNN) along with Two’s Compliment Shift Reverse (TCSLR) operation are the intentions of this work. Firstly, for extracting the vital features, the data gathered as of the dataset are utilized. After that, the extracted features are pre-processed. It is then utilized for attack detection. The null features and the redundant data are removed in preprocessing. By employing the Correlation Coefficient-centered Synthetic Minority Oversampling Technique (CC-SMOTE) methodology, data separation regarding classes and data balancing was performed to prevent the imbalance issue. Subsequently, to provide the preprocessed data for attack detection, the Numeralization and feature scaling are executed. After that, by utilizing Chebyshev Distance (CD)-centric K-Means Algorithm (KMA), the real-time SNs are initialized as well as clustered. The data gathered as of the SNs are utilized for attack detection following the clustering phase. Following the detection phase, the data being attacked are amassed in the log file; similarly, the non-attacked data are inputted into the prevention phase. Next, the experiential analysis is carried out for examining the proposed system’s efficacy. The outcomes revealed that the proposed model exhibits 98.15% accuracy, 97.59% sensitivity, 95.72% specificity, and 95.48% F-measure, which displays the proposed model’s efficacy.
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使用 SS-LSACNN 和 TCSLR 的高效 WSN DDOS 攻击入侵检测和防御系统
无线传感器网络(WSN)利用传感器节点(SN)来识别周围环境;此外,WSN 还将传感节点的数据传送到汇集器。由于传输的广播性能和应用区域的增长,WSN 面临着多种安全威胁。应采用入侵检测和防御系统(IDPS)等对策来克服上述攻击。通过实施这些系统,可以检测到 WSN 中的若干入侵行为,还可以防止 WSN 遭受各种安全攻击。因此,识别影响 SN 的一般攻击(如分布式拒绝服务(DDoS)攻击),并利用软虹吸(SS)-线性扩展为中心的亚当卷积神经网络(SS-LSACNN)和二进制移位反向(TCSLR)操作来恢复数据,是这项工作的目的所在。首先,为了提取重要特征,我们利用了从数据集中收集到的数据。然后,对提取的特征进行预处理。然后将其用于攻击检测。在预处理过程中,空特征和冗余数据会被去除。通过采用以相关系数为中心的合成少数群体过采样技术(CC-SMOTE)方法,对类别进行了数据分离,并对数据进行了平衡,以防止出现不平衡问题。随后,为了提供用于攻击检测的预处理数据,执行了数值化和特征缩放。之后,利用以切比雪夫距离(CD)为中心的 K-Means 算法(KMA),对实时 SN 进行初始化和聚类。在聚类阶段之后,收集到的 SN 数据将用于攻击检测。检测阶段结束后,被攻击的数据会被收集到日志文件中;同样,未被攻击的数据也会被输入到预防阶段。接下来,我们进行了经验分析,以检验拟议系统的功效。结果显示,建议模型的准确率为 98.15%,灵敏度为 97.59%,特异性为 95.72%,F-measure 为 95.48%,显示了建议模型的功效。
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来源期刊
Journal of Cyber Security and Mobility
Journal of Cyber Security and Mobility Computer Science-Computer Networks and Communications
CiteScore
2.30
自引率
0.00%
发文量
10
期刊介绍: Journal of Cyber Security and Mobility is an international, open-access, peer reviewed journal publishing original research, review/survey, and tutorial papers on all cyber security fields including information, computer & network security, cryptography, digital forensics etc. but also interdisciplinary articles that cover privacy, ethical, legal, economical aspects of cyber security or emerging solutions drawn from other branches of science, for example, nature-inspired. The journal aims at becoming an international source of innovation and an essential reading for IT security professionals around the world by providing an in-depth and holistic view on all security spectrum and solutions ranging from practical to theoretical. Its goal is to bring together researchers and practitioners dealing with the diverse fields of cybersecurity and to cover topics that are equally valuable for professionals as well as for those new in the field from all sectors industry, commerce and academia. This journal covers diverse security issues in cyber space and solutions thereof. As cyber space has moved towards the wireless/mobile world, issues in wireless/mobile communications and those involving mobility aspects will also be published.
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