基于机器学习的银行安全数据传输研究综述

Gurram Bhaskar, Motati Dinesh Reddy, Thatikonda , Mounika
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摘要

物联网(IoT)的安全重点是保护连接到远程网络的互联网授权设备。物联网安全致力于保护物联网设备和框架免受网络犯罪的侵害,它被认为是与物联网相关的重要安全元素。相反,银行应用程序正在动态地受到监管,因为它们无法提供足够水平的客户帮助,也无法确保自己免受数字攻击并做出反应。造成这种情况的一个主要因素是金融科技系统和组织的弱点。因此,发现这些物联网物品的无线组织是非常不受保护的。物联网是轻量级框架,在使用轻量级和节能加密技术进行保证时,它是理想的。深度学习是一种检查危险并对攻击和安全事件做出反应的熟练技术。因此,该业务利用深度学习的两种新策略,在物联网中实现了安全性和能源生产率。这项工作通过减少动态RAM接口中能耗高的“1”值的利用率,增加了物联网设备中最具创造性的节能方法。这应该可以通过在信息传输过程中利用信息的base + XOR编码来实现。利用基于条件生成对抗网络(CGAN)的深度学习策略,Base + XORencoding技术和cx.e.在银行/金融应用中得到了很好的准备或训练。信息时代的inCGAN依赖于利用生成器模型交付的规则。这项工作最终消耗了更少的能量,更少的信息传输时间,并且在考虑到现有框架时提供了更高的安全性。
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A Review on Secure Data Transmission for Banking Application using Machine Learning
Security on the Internet of Things (IoT) accentuates safeguarding the Internet-empowered devices that connect to remote networks. IoT Safety endeavors to shield IoT gadgets and frameworks against cybercrime, and it is considered a vital security element linked to the IoT. Conversely, banking applications are dynamically being regulated for their inability to give an adequate level of client assistance and insure themselves against and react to digital assaults. One of the primary components for this is the weakness of Fintech systems and organizations to breaking down. Therefore, wireless organizations covering these IoT items are incredibly unprotected. IoT is a lightweight framework, and it is ideal when utilizing lightweight and energy-effective cryptography for assurance. Deep learning is a proficient technique to examine dangers and react to assaults and security occurrences. So this business locales both security and energy productivity in IoT utilizing two novel strategies helped out through the deep learning. This work adds to the most inventive method of saving energy in IoT gadgets through diminishing the utilization of energy-costly '1' values in the interface of Dynamic RAM. This should be possible by utilizing Base + XOR encoding of information during information transmission. Utilizing Conditional Generative Adversarial Network (CGAN) based deep learning strategy, the Base + XOR encoding technique and C.X.E. are prepared or trained quite well in the banking/financial application. The information age in CGAN is done dependent on rules delivered utilizing the generator model. This work is ended up being burning-through less energy, less information transmission time, and gives greater security when thought about the existing frameworks.
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