Trustworthy and reliable data delivery is a challenging task in Wireless Sensor Networks (WSNs) due to unique characteristics and constraints. To acquire secured data delivery and address the conflict between security and energy, in this paper we present an evolutionary game based secure clustering protocol with fuzzy trust evaluation and outlier detection for WSNs. Firstly, a fuzzy trust evaluation method is presented to transform the transmission evidences into trust values while effectively alleviating the trust uncertainty. And then, a K-Means based outlier detection scheme is proposed to further analyze plenty of trust values obtained via fuzzy trust evaluation or trust recommendation. It can discover the commonalities and differences among sensor nodes while improving the accuracy of outlier detection. Finally, we present an evolutionary game based secure clustering protocol to achieve a trade-off between security assurance and energy saving for sensor nodes when electing for the cluster heads. A sensor node which failed to be the cluster head can securely choose its own head by isolating the suspicious nodes. Simulation results verify that our secure clustering protocol can effectively defend the network against the attacks from internal selfish or compromised nodes. Correspondingly, the timely data transfer rate can be improved significantly.
翻译:由于独特的特点和限制,在无线传感器网络(WSNs)中,可靠的可靠数据交付是一项具有挑战性的任务。为了获得可靠的数据交付,并解决安全和能源之间的冲突,我们在本文件中提出了一个基于进化的游戏安全集群协议,其中包含模糊的信托评价和对WSNS的超值检测。首先,提出了一个模糊的信托评估方法,将传输证据转化为信任价值,同时有效地减轻信任的不确定性。然后,提出了一个基于K-Means的外部检测计划,以进一步分析通过模糊的信托评估或信任建议获得的大量信任值。它可以发现传感器节点之间的共性和差异,同时提高外部检测的准确性。最后,我们提出了一个基于进化的基于进化的游戏安全集群协议,以便在选择集头时实现安全保障与传感器节点节节节节节节节节节节节节节节的权衡。一个未能成为集头的传感器节点可以通过隔离可疑的节点来安全地选择自己的头节点。模拟结果证实我们的安全集群协议能够有效地保护网络不受内部自私或受损的节节节点的攻击。