一种新型的基于扩展加权递归神经网络(RNN)的智能合约,用于使用混合加密方案在以太坊区块链中安全共享大数据。

IF 3.5 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
PeerJ Computer Science Pub Date : 2025-06-17 eCollection Date: 2025-01-01 DOI:10.7717/peerj-cs.2930
Swetha S, Joe Prathap P M
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引用次数: 0

摘要

背景:随着数据量的不断增加,对各个组织及其处理都具有重要意义,管理大数据成为数据管理者面临的重大挑战。廉价的新计算系统和云计算部门的发展为合格的行业提供了非常精确地收集和检索数据的能力,但是以更少的开销安全地在网络上传递数据是一项要求很高的工作。在去中心化框架下,大数据的共享给接收方和发送方之间的内部节点带来了负担,也造成了网络拥塞。用于重定向信息的内部节点可能没有足够的缓冲能力来暂时获取信息并再次将其传递给即将到来的节点,这可能会在数据传输中偶尔出现故障并经常失败。因此,选择下一个节点来传递数据是一项令人厌烦的工作,从而增加了分配信息的总接收周期。方法:区块链是主要的分布式设备,具有自己的信任方法。它通过多节点数据重复构建了一个可靠的分散控制框架。区块链参与为传输应用提供透明性。同时多线程框架确保在很短的时间内快速将数据传输到各种网络接收器。因此,本工作开发了一种安全、及时地存储和传输大数据的先进方法。初步设计了基于深度学习的智能合约。采用扩展加权递归神经网络(DW-RNN)设计以太坊区块链的智能合约。借助DW-RNN模型,在访问以太坊区块链中的数据之前验证用户的身份。如果验证了用户的身份验证,则将智能合约分配给授权用户。该模型使用椭圆曲线ElGamal加密(EC-EC),它是椭圆曲线加密(ECC)和ElGamal加密的结合,具有更好的安全性,以确保以太坊区块链上的大数据传输是安全的。采用改进的Al-Biruni地球半径搜索优化算法(MBERSO)为该EC-EC加密方案生成最佳密钥。该算法有效、安全地管理密钥,提高了区块链运行过程中的数据安全性。结果:加密过程促进了以太坊区块链上大数据的安全传输。通过实验分析证明了该模型在b区块链上通过智能合约传输大数据的有效性和安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel dilated weighted recurrent neural network (RNN)-based smart contract for secure sharing of big data in Ethereum blockchain using hybrid encryption schemes.

Background: With the enhanced data amount being created, it is significant to various organizations and their processing, and managing big data becomes a significant challenge for the managers of the data. The development of inexpensive and new computing systems and cloud computing sectors gave qualified industries to gather and retrieve the data very precisely however securely delivering data across the network with fewer overheads is a demanding work. In the decentralized framework, the big data sharing puts a burden on the internal nodes among the receiver and sender and also creates the congestion in network. The internal nodes that exist to redirect information may have inadequate buffer ability to momentarily take the information and again deliver it to the upcoming nodes that may create the occasional fault in the transmission of data and defeat frequently. Hence, the next node selection to deliver the data is tiresome work, thereby resulting in an enhancement in the total receiving period to allocate the information.

Methods: Blockchain is the primary distributed device with its own approach to trust. It constructs a reliable framework for decentralized control via multi-node data repetition. Blockchain is involved in offering a transparency to the application of transmission. A simultaneous multi-threading framework confirms quick data channeling to various network receivers in a very short time. Therefore, an advanced method to securely store and transfer the big data in a timely manner is developed in this work. A deep learning-based smart contract is initially designed. The dilated weighted recurrent neural network (DW-RNN) is used to design the smart contract for the Ethereum blockchain. With the aid of the DW-RNN model, the authentication of the user is verified before accessing the data in the Ethereum blockchain. If the authentication of the user is verified, then the smart contracts are assigned to the authorized user. The model uses elliptic Curve ElGamal cryptography (EC-EC), which is a combination of elliptic curve cryptography (ECC) and ElGamal encryption for better security, to make sure that big data transfers on the Ethereum blockchain are safe. The modified Al-Biruni earth radius search optimization (MBERSO) algorithm is used to make the best keys for this EC-EC encryption scheme. This algorithm manages keys efficiently and securely, which improves data security during blockchain operations.

Results: The processes of encryption facilitate the secure transmission of big data over the Ethereum blockchain. Experimental analysis is carried out to prove the efficacy and security offered by the suggested model in transferring big data over blockchain via smart contracts.

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来源期刊
PeerJ Computer Science
PeerJ Computer Science Computer Science-General Computer Science
CiteScore
6.10
自引率
5.30%
发文量
332
审稿时长
10 weeks
期刊介绍: PeerJ Computer Science is the new open access journal covering all subject areas in computer science, with the backing of a prestigious advisory board and more than 300 academic editors.
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