Ftdho Zfnet: Block chain based Fractional Tasmanian Devil Harris optimization enabled deep learning using attack detection and mitigation

S. S. Barani, R. Durga
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Abstract

Block chain technology is regarded for enhancing the characteristics of security because of decentralized design, safe distributed storage, and privacy. However, in recent times the present situation of block chain technology has experienced some crisis that may delay the quick acceptance and utilization in real-time applications. To conquer this subdues, a blockchain based system for attack detection and mitigation with Deep Learning (DL) named Fractional Tasmanian Devil Harris Optimization_Zeiler and Fergus network (FTDHO_ZFNet) is introduced. In this investigation, the entities utilized are owner, block chain, server, trusted authority and user. Here, authentication phase is done by means of Ethereum block chain by Key Exchange module and privacy preserved data sharing and communication is also done. Then, recorded log file creation is executed by the below mentioned stages. At first, a log file is generated with the basis of communication to record the events. After wards, the features are extracted by BoT-IoT database. Then, feature fusion is done by overlap coefficient utilizing Deep Q-Network (DQN). Moreover, data augmentation (DA) is doneusing bootstrapping method. At last, attack detection is observed by ZFNet tuned by FTDHO. Here, FTDHO is unified by Fractional Tasmanian Devil Optimization (FTDO) and Harris Hawks Optimization (HHO). Additionally, FTDO is integrated by Fractional Calculus (FC) concept and Tasmanian devil optimization (TDO). Furthermore, attack mitigation is performed. The performance measures applied for FTDHO_ZFNet are accuracy, and True Negative rate (TNR), observed supreme values with 92.9%, 93.8% and 92.9%.
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Ftdho Zfnet:基于区块链的分数塔斯马尼亚魔鬼哈里斯优化深度学习,使用攻击检测和缓解功能
区块链技术因其去中心化设计、安全的分布式存储和隐私性而被认为具有增强安全性的特点。然而,近来区块链技术的现状出现了一些危机,这可能会延迟其在实时应用中的快速接受和使用。为了克服这一不足,本文介绍了一种基于区块链的深度学习(DL)攻击检测和缓解系统,名为 "分数塔斯马尼亚魔鬼哈里斯优化_塞勒和弗格斯网络(FTDHO_ZFNet)"。在这项研究中,使用的实体包括所有者、区块链、服务器、可信机构和用户。在此,通过以太坊区块链的密钥交换模块完成身份验证阶段,并完成隐私保护数据共享和通信。然后,记录日志文件的创建由以下阶段完成。首先,在通信的基础上生成日志文件,记录事件。之后,通过 BoT-IoT 数据库提取特征。然后,利用深度 Q 网络(DQN)通过重叠系数进行特征融合。此外,还利用引导方法进行数据增强(DA)。最后,通过由 FTDHO 调整的 ZFNet 进行攻击检测。在这里,FTDHO 由分数塔斯马尼亚魔鬼优化(FTDO)和哈里斯-霍克斯优化(HHO)统一而成。此外,FTDHO 还与分数微积分(FC)概念和塔斯马尼亚魔鬼优化(TDO)相结合。此外,还进行了攻击缓解。FTDHO_ZFNet 的性能指标为准确率和真负率(TNR),观察到的最高值分别为 92.9%、93.8% 和 92.9%。
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