基于区块链和联合学习算法的物联网数据共享技术

Zhiqiang Feng
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引用次数: 0

摘要

为了更安全、准确、高效地共享物联网设备上的数据,本研究设计了一种基于区块链和联盟学习的分层共享架构。该架构通过客户端节点聚类和区块链共识过程,实现了高效、安全的物联网数据共享。此外,针对系统设备中数据标签分布不均衡的问题,设计了基于标签相似性的设备聚类联合学习算法,以提高模型的准确性和稳定性。实验结果表明,在独立同步数据分布和非独立同步数据分布条件下,该研究算法经过 30 次迭代后,准确率达到 95%,且通信成本相对较低。在非独立同步数据分布条件下测试算法稳定性时,标签类别越多,准确率越高。当标签类别 M = 12 时,准确率可达 96.0%。在某医院的医疗共享系统中,研究系统提取信息的时间比原系统减少了约 42.9%,准确率保持在 98% 以上。该研究方法能有效解决设备数据标签分布不均的问题,提高物联网数据共享系统的数据传输效率和准确性。此外,该方法还能减少恶意节点对全局模型的影响,为其他领域的数据传输和安全防护提供技术支持。
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IoT data sharing technology based on blockchain and federated learning algorithms

To share data on Internet of Things devices more securely, accurately, and efficiently, this study designs a layered sharing architecture based on blockchain and federated learning. This architecture achieves efficient and secure Internet of Things data sharing through client node clustering and blockchain consensus processes. In addition, to address the issue of imbalanced distribution of data labels in system devices, a device clustering federated learning algorithm based on label similarity is designed to improve the accuracy and stability of the model. The experimental results showed that under independent synchronous data distribution and non independent synchronous data distribution, the research algorithm achieved a 95 % accuracy after 30 iterations, and the communication cost was relatively low. When testing algorithm stability under non independent synchronous data distribution, the more label categories there are, the higher the accuracy. When the label category M = 12, the accuracy could reach 96.0 %. In the medical sharing system of a certain hospital, the research system took about 42.9 % less time to extract information than the original system, and the accuracy could be maintained at over 98 %. This research method can effectively solve the problem of uneven distribution of device data labels, and improve the data transmission efficiency and accuracy of Internet of Things data sharing systems. Moreover, this method can also reduce the impact of malicious nodes on the global model, providing technical support for data transmission and security protection in other fields.

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