Deep Neural Certificate less Hessian Heap Sign cryption for Secure Data Transmission in Wireless Network

N. Shoba, V. Sathya
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Abstract

Systematic and well grounded data transmission over wireless networks has been substance of uninterrupted research over the last few years. The paramount is scrutinizing the amount of security provisioning owing to the security challenges during transmission over wireless network. In fact, it is moderate to eavesdrop and alter data packets. Accessing the personal computer and public network possess the potentiality to apprehend the network traffic possibly compromising the privacy. Therefore for wireless applications, it is essential to ensure data integrity during data transmission. To efficiently address the above issues, a Deep Neural Certificate less Hessian Curve Heap Sign cryption (DNC-HCHS) method for secured data transmission in wireless network is proposed. Compared with the conventional, Certificate less Sign cryption DNC-HCHS method improves the data confidentiality and data integrity by generating smaller keys employing the Hessian Curve Heap function. Additionally with the assistance of the access point or the aggregator, the sensitivity of heaped sign crypted cipher text can improve the security of data transmission and reduce the message delivery time. Aimed at reducing the delay in data transmission, application of Certificate less Hessian Curve Heap Sign cryption in Deep Learning (i.e., Deep Neural Network) performs the overall process in a swift manner and performs a much better encryption. Simulation is performed to validate the viability and efficiency of the proposed method. The results show that the data confidentiality and data integrity rate are strongly improved, while the delay is minimized.
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面向无线网络数据安全传输的深度神经证书无黑森堆签名加密
在过去几年中,通过无线网络进行系统的、接地良好的数据传输一直是不间断研究的内容。最重要的是仔细检查由于无线网络传输过程中的安全挑战而提供的安全配置数量。实际上,窃听和篡改数据包是适度的。访问个人计算机和公共网络具有捕获可能危及隐私的网络流量的潜力。因此,对于无线应用来说,确保数据传输过程中的数据完整性至关重要。为了有效地解决上述问题,提出了一种无深度神经证书的Hessian曲线堆符号加密(DNC-HCHS)无线网络安全数据传输方法。与传统的无证书签名加密DNC-HCHS方法相比,DNC-HCHS方法利用Hessian曲线堆函数生成更小的密钥,提高了数据的保密性和数据完整性。此外,在接入点或聚合器的辅助下,堆签名加密密文的敏感性可以提高数据传输的安全性,缩短消息传递时间。为了减少数据传输的延迟,在深度学习(即深度神经网络)中应用Certificate - less Hessian Curve Heap Sign加密,可以快速完成整个过程,并且加密效果更好。通过仿真验证了该方法的可行性和有效性。结果表明,该方法在最大限度地降低时延的同时,数据保密性和数据完整性得到了极大的提高。
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