Evaluation of Decision Matrix, Hash Rate and Attacker Regions Effects in Bitcoin Network Securities

Agus Winarno, Novi Angraini, Muhammad Salmon Hardani, R. Harwahyu, R. F. Sari
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Abstract

Bitcoin is a famously decentralized cryptocurrency. Bitcoin is excellent because it is a digital currency that provides convenience and security in transactions. Transaction security in Bitcoin uses a consensus involving a distributed system, the security of this system generates a hash sequence with a Proof of Work (PoW) mechanism. However, in its implementation, various attacks appear that are used to generate profits from the existing system. Attackers can use various types of methods to get an unfair portion of the mining income. Such attacks are commonly referred to as Mining attacks. Among which the famous is the Selfish Mining attack. In this study, we simulate the effect of changing decision matrix, attacker region, attacker hash rate on selfish miner attacks by using the opensource NS3 platform. The experiment aims to see the effect of using 1%, 10%, and 20% decision matrices with different attacker regions and different attacker hash rates on Bitcoin selfish mining income. The result of this study shows that regional North America and Europe have the advantage in doing selfish mining attacks. This advantage is also supported by increasing the decision matrix from 1%, 10%, 20%. The highest attacker income, when using decision matrix 20% in North America using 16 nodes on 0.3 hash rate with income 129 BTC. For the hash rate, the best result for a selfish mining attack is between 27% to 30% hash rate.
比特币网络证券中决策矩阵、哈希率和攻击者区域效应的评估
比特币是一种著名的去中心化加密货币。比特币之所以优秀,是因为它是一种为交易提供便利和安全的数字货币。比特币的交易安全性使用了一个涉及共识的分布式系统,该系统的安全性生成了一个带有工作量证明(PoW)机制的哈希序列。然而,在其实施过程中,出现了各种用于从现有系统中获利的攻击。攻击者可以使用各种方法来获得不公平的挖矿收入。这种攻击通常被称为挖矿攻击。其中最著名的是“自私采矿”攻击。在本研究中,我们利用开源的NS3平台,模拟了改变决策矩阵、攻击者区域、攻击者哈希率对自私矿工攻击的影响。实验旨在观察在不同攻击者区域和不同攻击者哈希率下使用1%、10%和20%决策矩阵对比特币自私挖矿收入的影响。本研究结果表明,北美和欧洲地区在进行自私的采矿攻击方面具有优势。决策矩阵从1%、10%、20%增加也支持这一优势。最高的攻击者收入,当使用决策矩阵20%时,在北美使用16个节点,0.3哈希率,收入129 BTC。对于哈希率来说,自私挖矿攻击的最佳结果是在27%到30%的哈希率之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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