A Hierarchical Blockchain-Based Trust Measurement Method for Drone Cluster Nodes

IF 4.4 2区 地球科学 Q1 REMOTE SENSING Drones Pub Date : 2023-10-08 DOI:10.3390/drones7100627
Jinxin Zuo, Ruohan Cao, Jiahao Qi, Peng Gao, Ziping Wang, Jin Li, Long Zhang, Yueming Lu
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Abstract

In response to the challenge of low accuracy in node trust evaluation due to the high dynamics of entry and exit of drone cluster nodes, we propose a hierarchical blockchain-based trust measurement method for drone cluster nodes. This method overcomes the difficulties related to trust inheritance for dynamic nodes, trust re-evaluation of dynamic clusters, and integrated trust calculation for drone nodes. By utilizing a multi-layer unmanned cluster blockchain for trusted historical data storage and verification, we achieve scalability in measuring intermittent trust across time intervals, ultimately improving the accuracy of trust measurement for drone cluster nodes. We design a resource-constrained multi-layer unmanned cluster blockchain architecture, optimize the computing power balance within the cluster, and establish a collaborative blockchain mechanism. Additionally, we construct a dynamic evaluation method for trust in drone nodes based on task perception, integrating and calculating the comprehensive trust of drone nodes. This approach addresses trusted sharing and circulation of task data and resolves the non-inheritability of historical data. Experimental simulations conducted using NS3 and MATLAB demonstrate the superior performance of our trust value measurement method for unmanned aerial vehicle cluster nodes in terms of accurate malicious node detection, resilience to trust value fluctuations, and low resource delay retention.
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基于分层区块链的无人机集群节点信任度量方法
针对无人机集群节点进入和退出的高度动态性导致节点信任评估精度不高的问题,提出了一种基于分层区块链的无人机集群节点信任度量方法。该方法克服了动态节点的信任继承、动态集群的信任重评估和无人机节点的综合信任计算等困难。通过利用多层无人集群区块链进行可信历史数据存储和验证,实现了跨时间间隔测量间歇性信任的可扩展性,最终提高了无人机集群节点信任测量的准确性。我们设计了资源受限的多层无人集群区块链架构,优化集群内的算力平衡,建立区块链协同机制。此外,我们构建了一种基于任务感知的无人机节点信任度动态评估方法,对无人机节点的综合信任度进行积分计算。这种方法解决了任务数据的可信共享和循环,并解决了历史数据的不可继承性。利用NS3和MATLAB进行的实验仿真表明,我们的无人机集群节点信任值度量方法在准确检测恶意节点、抗信任值波动、低资源延迟保留等方面具有优越的性能。
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来源期刊
Drones
Drones Engineering-Aerospace Engineering
CiteScore
5.60
自引率
18.80%
发文量
331
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