Sniffing Prevention in LoRa Network Using Combination of Advanced Encryption Standard (AES) and Message Authentication Code (MAC)

Putri Apriyanti Windya, V. Suryani, Aulia Arif Wardana
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引用次数: 3

Abstract

One of the characteristics of IoT devices is related to their limited resources. These devices are often referred to as IoT-constrained devices. The limited resources of IoT devices becomes a challenge in choosing an appropriate security method. To overcome this problem, an appropriate security method in the use of AES algorithms and MAC is deemed important. The variants of AES algorithm used in this research included AES128 and AES256. Meanwhile, the MAC algorithm used was Hash-based Message Authentication Code (HMAC). This paper presents how to prevent the sniffing activity on wireless sensor network - especially in LoRa networks due to the increasing use of LoRa, as well as the development of IoT devices. Based on the results of the security analysis that has been done, this method was found to be able to guarantee the aspects of confidentiality, authentication, and integrity. In this paper, overhead analysis on IoT constrained devices class 0 and class 2 was also performed with the results showing that this method was acceptable to be implemented on IoT constrained devices class 0 and class 2.
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基于AES和MAC的LoRa网络嗅探防范
物联网设备的特征之一与它们有限的资源有关。这些设备通常被称为物联网受限设备。物联网设备有限的资源成为选择合适的安全方法的挑战。为了克服这一问题,在AES算法和MAC的使用中采用适当的安全方法是很重要的。本研究中使用的AES算法变体包括AES128和AES256。同时,使用的MAC算法是基于哈希的消息认证码(HMAC)。本文介绍了如何防止无线传感器网络上的嗅探活动-特别是在LoRa网络中,由于LoRa的使用越来越多,以及物联网设备的发展。根据已完成的安全性分析结果,发现该方法能够保证机密性、身份验证和完整性。本文还对物联网受限设备0类和2类进行了开销分析,结果表明该方法可以在物联网受限设备0类和2类上实现。
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