Zhang Yecheng, Zhang Qimin, Zhao Yuxuan, Deng Yunjie, Zheng Hao
College of Architecture & Art, Hefei University of Technology, Hefei, China.
School of Mechanical Engineering, Hefei University of Technology, Hefei, China.
Int J Appl Earth Obs Geoinf. 2022 Aug;112:102942. doi: 10.1016/j.jag.2022.102942. Epub 2022 Aug 5.
From an epidemiological perspective, previous research on COVID-19 has generally been based on classical statistical analyses. As a result, spatial information is often not used effectively. This paper uses image-based neural networks to explore the relationship between urban spatial risk and the distribution of infected populations, and the design of urban facilities. To achieve this objective, we use spatio-temporal data of people infected with new coronary pneumonia prior to 28 February 2020 in Wuhan. We then use kriging, which is a method of spatial interpolation, as well as core density estimation technology to establish the epidemic heat distribution on fine grid units. We further evaluate the influence of nine major spatial risk factors, including the distribution of agencies, hospitals, park squares, sports fields, banks and hotels, by testing them for significant positive correlation with the distribution of the epidemic. The weights of these spatial risk factors are used for training Generative Adversarial Network (GAN) models, which predict the distribution of cases in a given area. The input image for the machine learning model is a city plan converted by public infrastructures, and the output image is a map of urban spatial risk factors in the given area. The results of the trained model demonstrate that optimising the relevant point of interests (POI) in urban areas to effectively control potential risk factors can aid in managing the epidemic and preventing it from dispersing further.
从流行病学角度来看,以往关于新冠疫情的研究通常基于经典统计分析。因此,空间信息往往未得到有效利用。本文利用基于图像的神经网络来探索城市空间风险与感染人群分布以及城市设施设计之间的关系。为实现这一目标,我们使用了2020年2月28日前武汉新冠肺炎感染者的时空数据。然后,我们使用空间插值方法克里金法以及核密度估计技术,在精细网格单元上建立疫情热度分布。我们通过测试九个主要空间风险因素(包括机构、医院、公园广场、运动场、银行和酒店的分布)与疫情分布的显著正相关性,进一步评估其影响。这些空间风险因素的权重用于训练生成对抗网络(GAN)模型,该模型可预测给定区域内的病例分布。机器学习模型的输入图像是由公共基础设施转换而来的城市规划图,输出图像是给定区域内城市空间风险因素图。训练模型的结果表明,优化城市区域内的相关兴趣点(POI)以有效控制潜在风险因素,有助于管理疫情并防止其进一步扩散。