数字双胞胎对抗新冠肺炎疫情

Dongliang Chen , Nojoom A. AlNajem , Mohammad Shorfuzzaman
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引用次数: 4

摘要

本研究旨在探讨数字孪生等人工智能(AI)算法对COVID-2019(新型冠状病毒病2019)的抗疫效果,使疫情防控的信息安全性和预测准确性(P &C)在智慧城市中可以进一步改善。针对当前新冠肺炎疫情公共事务治理战略中存在的问题,运用数字孪生技术绘制疫情分布图。C的情况在真实空间到虚拟空间。然后,引入区块链技术和深度学习算法,基于区块链结合BiLSTM(双向长短期记忆)构建COVID-2019疫情的数字孪生模型(COVID-DT模型)。此外,通过仿真分析了所构建的COVID-DT模型的性能。对网络数据安全传输性能的分析表明,构建的COVID-DT模型具有较低的平均时延,其数据报文投递率(DMDR)基本稳定在80%,数据报文披露率(DMDCR)基本稳定在10%左右。通过对网络通信成本的分析,本研究的成本不超过700字节,预测误差不超过10%。因此,所构建的COVID-DT模型在保证低延迟性能的同时,具有较高的网络安全性能,能够实现更高效、准确的信息交互,可为疫情防控信息安全和发展趋势提供实验依据;C在智慧城市。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital twins to fight against COVID-19 pandemic

This study is aimed to explore the anti-epidemic effect of artificial intelligence (AI) algorithms such as digital twins on the COVID-2019 (novel coronavirus disease 2019), so that the information security and prediction accuracy of epidemic prevention and control (P & C) in smart cities can be further improved. It addresses the problems in the current public affairs governance strategy for the outbreak of the COVID-2019 epidemic, and uses digital twins technology to map the epidemic P & C situation in the real space to the virtual space. Then, the blockchain technology and deep learning algorithms are introduced to construct a digital twins model of the COVID-2019 epidemic (the COVID-DT model) based on blockchain combined with BiLSTM (Bi-directional Long Short-Term Memory). In addition, performance of the constructed COVID-DT model is analyzed through simulation. Analysis of network data security transmission performance reveals that the constructed COVID-DT model shows a lower average delay, its data message delivery rate (DMDR) is basically stable at 80%, and the data message disclosure rate (DMDCR) is basically stable at about 10%. The analysis on network communication cost suggests that the cost of this study does not exceed 700 bytes, and the prediction error does not exceed 10%. Therefore, the COVID-DT model constructed shows high network security performance while ensuring low latency performance, enabling more efficient and accurate interaction of information, which can provide experimental basis for information security and development trends of epidemic P & C in smart cities.

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