基于多代理强化学习的物联网网络恶意软件感染节点算法检测

Pub Date : 2024-05-18 DOI:10.1093/jigpal/jzae068
Marcos Severt, Roberto Casado-Vara, Á. M. del Rey, Héctor Quintián, José Luis Calvo-Rolle
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引用次数: 0

摘要

物联网(IoT)是一种快速发展的技术,它将日常设备与互联网连接起来,实现无线、低耗、低成本的通信和数据交换。物联网彻底改变了设备之间以及设备与互联网之间的交互方式。设备连接越多,安全漏洞的风险就越大。目前需要新的算法方法,无论网络规模大小,都能检测出恶意软件,并能适应网络的动态变化。通过使用多代理强化学习算法,本文提出了一种用于检测物联网设备中恶意软件的新型算法。如果物联网网络规模较小,则使用时差进行训练,反之则使用蒙特卡洛进行训练,因此所提算法对物联网网络规模的依赖性不强。为了在尽可能接近现实的环境中验证所提出的算法,我们提出了一个基于真实物联网网络的场景,并在其中测试了不同的恶意软件传播模型。我们进行了不同的模拟,改变了物联网网络中代理和节点的数量。这些模拟的结果证明,无论恶意软件的传播模式如何,所提出的算法在检测恶意软件方面都具有高效性和适应性。
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Multi-agent reinforcement learning based algorithm detection of malware-infected nodes in IoT networks
The Internet of Things (IoT) is a fast-growing technology that connects everyday devices to the Internet, enabling wireless, low-consumption and low-cost communication and data exchange. IoT has revolutionized the way devices interact with each other and the internet. The more devices become connected, the greater the risk of security breaches. There is currently a need for new approaches to algorithms that can detect malware regardless of the size of the network and that can adapt to dynamic changes in the network. Through the use of a multi-agent reinforcement learning algorithm, this paper proposes a novel algorithm for malware detection in IoT devices. The proposed algorithm is not strongly dependent on the size of the IoT network due to the that its training is adapted using time differences if the IoT network size is small or Monte Carlo otherwise. To validate the proposed algorithm in an environment as close to reality as possible, we proposed a scenario based on a real IoT network, where we tested different malware propagation models. Different simulations varying the number of agents and nodes in the IoT network have been developed. The result of these simulations proves the efficiency and adaptability of the proposed algorithm in detecting malware, regardless of the malware propagation model.
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