Department of Computer Science and Engineering, Rajiv Gandhi University, Itanagar 791112, India.
Department of Computer and Information Sciences, Northumbria University, Newcastle upon Tyne NE1 8ST, UK.
Sensors (Basel). 2023 Jun 14;23(12):5562. doi: 10.3390/s23125562.
The number of users of the Internet has been continuously rising, with an estimated 5.1 billion users in 2023, which comprises around 64.7% of the total world population. This indicates the rise of more connected devices to the network. On average, 30,000 websites are hacked daily, and nearly 64% of companies worldwide experience at least one type of cyberattack. As per IDC's 2022 Ransomware study, two-thirds of global organizations were hit by a ransomware attack that year. This creates the desire for a more robust and evolutionary attack detection and recovery model. One aspect of the study is the bio-inspiration models. This is because of the natural ability of living organisms to withstand various odd circumstances and overcome them with an optimization strategy. In contrast to the limitations of machine learning models with the need for quality datasets and computational availability, bio-inspired models can perform in low computational environments, and their performances are designed to evolve naturally with time. This study concentrates on exploring the evolutionary defence mechanism in plants and understanding how plants react to any known external attacks and how the response mechanism changes to unknown attacks. This study also explores how regenerative models, such as salamander limb regeneration, could build a network recovery system where services could be automatically activated after a network attack, and data could be recovered automatically by the network after a ransomware-like attack. The performance of the proposed model is compared to open-source IDS Snort and data recovery systems such as Burp and Casandra.
互联网用户数量持续攀升,预计 2023 年将达到 51 亿,占世界总人口的 64.7%左右。这意味着连接到网络的设备数量不断增加。平均每天有 30000 个网站被黑客攻击,全球近 64%的公司至少遭遇过一次网络攻击。根据国际数据公司(IDC)2022 年的勒索软件研究报告,当年全球三分之二的组织遭受了勒索软件攻击。这就需要一种更强大和进化的攻击检测和恢复模型。研究的一个方面是生物启发模型。这是因为生物体具有承受各种异常情况并通过优化策略克服它们的自然能力。与机器学习模型的局限性不同,机器学习模型需要高质量的数据集和计算可用性,生物启发模型可以在低计算环境中运行,并且它们的性能旨在随着时间的推移自然进化。本研究集中探讨植物的进化防御机制,了解植物如何应对已知的外部攻击,以及响应机制如何随着未知攻击而变化。本研究还探讨了再生模型,如蝾螈肢体再生,如何构建网络恢复系统,在网络攻击后自动激活服务,以及在勒索软件攻击后自动恢复网络数据。与开源 IDS Snort 和 Burp 和 Cassandra 等数据恢复系统相比,对所提出模型的性能进行了比较。