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Integration of recurrent convolutional neural network and optimal encryption scheme for intrusion detection with secure data storage in the cloud

机译:云中安全数据存储的循环卷积神经网络与最优加密方案的集成

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摘要

Data communication security is growing day after day with the proliferation of cloud computing. It is primarily because of the few security constraints and challenges occurring in the cloud environment during data transmission. Existing research has shown that the intrusion detection system (IDS) centered on the cloud is more complicated. In this article, we address the above issues by proposing an attention-based recurrent convolutional neural network (RCNN). This proposed RCNN is used to detect whether the text data are intrusion or nonintrusion. The nonintrusion text information is then used for further processing and encrypted using a two-way encryption scheme. We introduce the elliptical curve cryptography (ECC) approach to increase the security-level performance of nonintrusion data. Moreover, the integration of ECC with the modified flower pollination algorithm (MFP-ECC) creates the two-way encryption scheme, and it is used to produce an optimal private key. The encrypted data are then stored in a cloud environment by steganography and the data with the sensitive information are replaced by some other text, thus providing security to the data at rest. The proposed MFP-ECC approach shows maximum breaking time results and can also withstand different classical attacks when compared with other methods. As a result, the proposed intrusion detection and secure data storage mechanism is highly secured and it is never affected by any kinds of conspiracy attacks.
机译:数据通信安全性在日复一日的日复一日越来越晚,云计算的激增。它主要是因为在数据传输期间云环境中发生的少数安全限制和挑战。现有研究表明,云上以云为中心的入侵检测系统(ID)更复杂。在本文中,我们通过提出基于注意的复发卷积神经网络(RCNN)来解决上述问题。这提出的RCNN用于检测文本数据是否是入侵或不间生性。然后使用非线性文本信息用于使用双向加密方案进行进一步处理和加密。我们介绍了椭圆曲线密码术(ECC)方法来提高非全力数据的安全级性能。此外,ECC与修改的花授粉算法的集成(MFP-ECC)创建了双向加密方案,它用于产生最佳私钥。然后,加密数据通过隐写术存储在云环境中,并且具有敏感信息的数据被一些其他文本替换,从而向休息时向数据提供安全性。所提出的MFP-ECC方法显示出最大断裂时间结果,与其他方法相比,也可以承受不同的经典攻击。结果,建议的入侵检测和安全数据存储机制是高度安全的,因此它永远不会受到任何类型的阴谋攻击的影响。

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