A Trustworthy Data Aggregation Model Based on Context and Data Density Correlation Degree

Yunquan Gao, Xiaoyong Li, Jirui Li, Yali Gao
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引用次数: 4

Abstract

Data aggregation is widely used in wireless sensor networks (WSNs) due to the resource constraints of computational capability, energy and bandwidth. Because WSNs are often deployed in an unattended hostile environment, WSNs are prone to various attacks. The traditional security technologies such as privacy protection and encryption technology can not address the attacks from the internal nodes of network. Therefore, the trust management mechanism for data aggregation has become a hot research topic, and an efficient trust management mechanism plays an important role in data aggregation. In this paper, we propose an efficient trust model based on context and data density correlation degree. Our proposed trust model consists of three major contexts, sensing trust, link trust, node trust. We take into full account data aggregating characteristic and different impacts of node trust, link trust and sensing trust on the secure of data aggregation. We also take into account data correlation degree in computing sensing trust, which leads to more accurate trust result. The experiment results show that compared to the existing trust models our proposed trust model provides more accurate sensing trust and improves the throughput and robustness against malicious attacks. Our proposed trust model is more suitable for data aggregation than conventional trust models.
基于上下文和数据密度关联度的可信数据聚合模型
由于计算能力、能量和带宽等资源的限制,数据聚合在无线传感器网络中得到了广泛的应用。由于无线传感器网络经常部署在无人值守的敌对环境中,因此容易受到各种攻击。传统的安全技术,如隐私保护和加密技术,无法解决来自网络内部节点的攻击。因此,数据聚合的信任管理机制成为研究热点,高效的信任管理机制在数据聚合中起着重要作用。本文提出了一种基于上下文和数据密度关联度的高效信任模型。我们提出的信任模型包括感知信任、链路信任和节点信任三种主要情境。充分考虑了数据聚合的特点以及节点信任、链路信任和感知信任对数据聚合安全性的不同影响。我们还在计算感知信任时考虑了数据的关联度,使得信任结果更加准确。实验结果表明,与现有的信任模型相比,本文提出的信任模型提供了更准确的感知信任,提高了吞吐量和对恶意攻击的鲁棒性。本文提出的信任模型比传统的信任模型更适合于数据聚合。
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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