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Unequal Probability Marking Approach to Enhance Security of Traceback Scheme in Tree-Based WSNs

机译:基于树的无线传感器网络中提高回溯方案安全性的不等概率标记方法

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Fog (from core to edge) computing is a newly emerging computing platform, which utilizes a large number of network devices at the edge of a network to provide ubiquitous computing, thus having great development potential. However, the issue of security poses an important challenge for fog computing. In particular, the Internet of Things (IoT) that constitutes the fog computing platform is crucial for preserving the security of a huge number of wireless sensors, which are vulnerable to attack. In this paper, a new unequal probability marking approach is proposed to enhance the security performance of logging and migration traceback (LM) schemes in tree-based wireless sensor networks (WSNs). The main contribution of this paper is to overcome the deficiency of the LM scheme that has a higher network lifetime and large storage space. In the unequal probability marking logging and migration (UPLM) scheme of this paper, different marking probabilities are adopted for different nodes according to their distances to the sink. A large marking probability is assigned to nodes in remote areas (areas at a long distance from the sink), while a small marking probability is applied to nodes in nearby area (areas at a short distance from the sink). This reduces the consumption of storage and energy in addition to enhancing the security performance, lifetime, and storage capacity. Marking information will be migrated to nodes at a longer distance from the sink for increasing the amount of stored marking information, thus enhancing the security performance in the process of migration. The experimental simulation shows that for general tree-based WSNs, the UPLM scheme proposed in this paper can store 1.12–1.28 times the amount of stored marking information that the equal probability marking approach achieves, and has 1.15–1.26 times the storage utilization efficiency compared with other schemes.
机译:雾(从核心到边缘)计算是一个新兴的计算平台,它利用网络边缘的大量网络设备来提供无处不在的计算,因此具有很大的发展潜力。但是,安全性问题对雾计算提出了重要的挑战。尤其是,构成雾计算平台的物联网(IoT)对于维护大量易受攻击的无线传感器的安全性至关重要。本文提出了一种新的不等概率标记方法,以提高基于树的无线传感器网络(WSN)中的日志记录和迁移回溯(LM)方案的安全性能。本文的主要贡献是克服了LM方案的缺点,该方案具有更高的网络生存期和较大的存储空间。在本文的不等概率标记记录和迁移(UPLM)方案中,根据不同节点到接收器的距离,对不同节点采用了不同的标记概率。将较大的标记概率分配给偏远区域(距接收器较远的区域)中的节点,而将较小的标记概率分配给附近区域(距接收器较近的区域)中的节点。除了提高安全性能,使用寿命和存储容量外,这还减少了存储和能源消耗。标记信息将被迁移到距离接收器较远的节点,以增加存储的标记信息的数量,从而增强迁移过程中的安全性能。实验仿真表明,对于一般的基于树的无线传感器网络,本文提出的UPLM方案可以存储等概率标记方法实现的存储标记信息量的1.12–1.28倍,与之相比,存储利用率为1.15–1.26倍与其他方案。

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