使用安全密钥共享增强云环境中的安全性

IF 0.6 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Communications Software and Systems Pub Date : 2020-07-20 DOI:10.24138/jcomss.v16i3.964
S. Chhabra, Ashutosh Kumar Singh
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引用次数: 7

摘要

分布式云系统中的数据安全被认为是云客户面临安全风险的主要问题之一。数据泄露或数据篡改被攻击者广泛利用,通过虚拟化手段获取共享机密数据的其他用户的隐私信息。本文提出了安全秘密共享(SSS)技术,它是目前公认的保护敏感数据安全的主要方法之一。它通过云共享加密数据,生成的密钥被分割成不同的部分,仅分发给合格的参与者(Qn),并由恶意检查器进行分析。它根据客户端以前的表现来验证客户端,无论这些用户是否被证明是授权的参与者。密钥计算由被称为可信方的密钥处理程序(KH)评估,它管理授权控制列表、密钥共享的加密/解密和重建。利用拉格朗日插值法从股份中重构秘密。实验结果表明,所提出的安全数据共享算法不仅具有良好的安全性和性能,而且在密钥管理和数据保密性方面也优于以往的对策。通过使用安全虚拟机放置来提高安全性,并根据时间消耗和概率计算进行评估,以证明算法的有效性。在cloudsim上基于以下参数进行实验,即密钥生成的时间计算;响应时间和加密/解密。实验结果表明,该方法可以有效降低风险,安全性和耗时比现有算法分别提高27.81%和43.61%。
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Security Enhancement in Cloud Environment using Secure Secret Key Sharing
Securing the data in distributed cloud system is considered one of the major concern for the cloud customers who faces security risks. The data leakage or data tampering are widely used by attackers to extract the private information of other users who shares the confidential data through virtualization. This paper presents Secure Secret Sharing (SSS) technique which is being recognized as one of the leading method to secure the sensitive data. It shares encrypted data over cloud and generated secret key is split into different parts distributed to qualified participants (Qn) only which is analyzed by malicious checkers. It verifies the clients based on their previous performances, whether these users proved to be authorized participant or not. The key computation is evaluated by the Key handler (KH) called trusted party which manages authorized control list, encryption/decryption and reconstruction of key shares. The Lagrange’s interpolation method is used to reconstruct the secret from shares. The experimental results shows that the proposed secure data sharing algorithm not only provides excellent security and performance, but also achieves better key management and data confidentiality than previous countermeasures. It improves the security by using secure VM placement and evaluated based on time consumption and probability computation to prove the efficacy of our algorithm. Experiments are performed on cloudsim based on following parameters i.e. time computation of key generation; response time and encryption/decryption. The experimental results demonstrate that this method can effectively reduce the risks and improves the security and time consumption upto 27.81% and 43.61% over existing algorithms.
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来源期刊
Journal of Communications Software and Systems
Journal of Communications Software and Systems Engineering-Electrical and Electronic Engineering
CiteScore
2.00
自引率
14.30%
发文量
28
审稿时长
8 weeks
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