Enhancing Cloud Forensic Investigation System in Distributed Cloud Computing Using DK-CP-ECC Algorithm and EK-ANFIS

Shaiqa Nasreen, A. H. Mir
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Abstract

The investigation as well as recovery of data gathered as of digital devices associated with computer crime is involved in Digital Forensics (DF). In a distributed Cloud Server (CS), DF investigation is more complicated (during collecting, preserving, and reporting the evidence) as well as insecure during gathering evidence as of the cloud sources. Centered on the DF investigation system, numerous works were performed. However, lots of challenges still remain that bring about cybercrime. The work developed a robust cloud forensic investigation system centered upon distributed Cloud Computing (CC) for conquering the challenges. It is framed into the ‘3’ phase (i.e.) originally, Group Key Generation (GKG) phase that enables the authorized user to upload or download the evidence for maintaining the evidence’s trustworthiness. Distributed Key Cipher Policy Elliptic Curve Cryptography (DK-CP-ECC) algorithm performed the Secure Data Transfer (SDT) phase. It aids in maintaining the evidence’s privacy together with confidentiality. Exponential Membership Function Adaptive Neuro-Fuzzy Interference System (EK-ANFIS) carries out the CS selection with the aid of a deer hunting genetic algorithm that evades the reporting issues and renders secure evidence storage. 97% Security Level (SL) is obtained by the proposed work that is better analogized to the prevailing frameworks.
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利用DK-CP-ECC算法和EK-ANFIS增强分布式云取证系统
调查和恢复与计算机犯罪有关的数字设备收集的数据涉及数字取证(DF)。在分布式云服务器(distributed Cloud Server, CS)中,DF调查更加复杂(收集、保存和报告证据的过程),并且在收集证据的过程中不安全。围绕DF调查系统,开展了大量工作。然而,带来网络犯罪的许多挑战仍然存在。该工作开发了一个以分布式云计算(CC)为中心的强大的云取证调查系统,以应对挑战。它被分为“3”阶段(即),最初是组密钥生成(GKG)阶段,该阶段允许授权用户上传或下载证据,以保持证据的可信度。分布式密钥密码策略椭圆曲线加密(DK-CP-ECC)算法执行安全数据传输(SDT)阶段。它有助于维护证据的隐私和保密性。指数隶属函数自适应神经模糊干扰系统(EK-ANFIS)利用猎鹿遗传算法进行CS选择,避免了报告问题,保证了证据存储的安全性。97%的安全级别(SL)是由提议的工作获得的,它可以更好地模拟当前的框架。
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