通过深度最大化辅助数据清理和恢复流程保障云数据安全

IF 3.2 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Shrikant D. Dhamdhere, M. Sivakkumar, V. Subramanian
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引用次数: 0

摘要

云计算的潜力,一个新兴的概念,以尽量减少与计算相关的成本,最近吸引了许多研究人员的兴趣。云计算技术的快速发展导致了云服务的惊人到来。但对于现代文明来说,数据安全是一个具有挑战性的问题。云计算的主要问题是云安全以及网络上有效的云分布。用加密方法来提高数据的隐私性是近年来取得很大进展的最好方法。在这方面,卫生处理也是数据保密的过程。这项工作的目标是提出一个深度学习辅助的数据清理程序,用于数据安全。提出的数据处理过程包括以下步骤:数据预处理、最优密钥生成、深度学习辅助密钥微调和Kronecker产品。在这里,数据预处理既考虑原始数据,又考虑提取的统计特征。密钥生成是后续过程,为此,本研究开发了一种自适应Namib甲虫优化(SANBO)算法。在生成的键中,通过改进的Deep Maxout分类器对适当的键进行微调。然后,克罗内克产品在消毒过程中完成。在数据恢复阶段,反转清理过程将生成原始数据。研究部分指出,建议的数据清理技术可以保证云数据的安全,免受恶意攻击。并从修复效果和关键敏感性分析两方面对拟建工程进行了分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cloud data security with deep maxout assisted data sanitization and restoration process
The potential of cloud computing, an emerging concept to minimize the costs associated with computing has recently drawn the interest of a number of researchers. The fast advancements in cloud computing techniques led to the amazing arrival of cloud services. But data security is a challenging issue for modern civilization. The main issues with cloud computing are cloud security as well as effective cloud distribution over the network. Increasing the privacy of data with encryption methods is the greatest approach, which has highly progressed in recent times. In this aspect, sanitization is also the process of confidentiality of data. The goal of this work is to present a deep learning-assisted data sanitization procedure for data security. The proposed data sanitization process involves the following steps: data preprocessing, optimal key generation, deep learning-assisted key fine-tuning, and Kronecker product. Here, the data preprocessing considers original data as well as the extracted statistical feature. Key generation is the subsequent process, for which, a self-adaptive Namib beetle optimization (SANBO) algorithm is developed in this research. Among the generated keys, appropriate keys are fine-tuned by the improved Deep Maxout classifier. Then, the Kronecker product is done in the sanitization process. Reversing the sanitization procedure will yield the original data during the data restoration phase. The study part notes that the suggested data sanitization technique guarantees cloud data security against malign attacks. Also, the analysis of proposed work in terms of restoration effectiveness and key sensitivity analysis is also done.
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来源期刊
CiteScore
4.70
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