Zheng Liang, Chen Yile, Jiang Shan, Song Junxin, Zheng Jianyi
Faculty of Humanities and Arts, Macau University of Science and Technology, Macau, Macao SAR, China.
Front Big Data. 2023 Jan 25;6:1008292. doi: 10.3389/fdata.2023.1008292. eCollection 2023.
Machine learning (ML) is an innovative method that is widely used in data prediction. Predicting the COVID-19 distribution using ML is essential for urban security risk assessment and governance. This study uses conditional generative adversarial network (CGAN) to construct a method to predict the COVID-19 hotspot distribution through urban texture and business formats and establishes a relationship between urban elements and COVID-19 so that machines can automatically predict the epidemic hotspots in cities. Taking Macau as an example, this method is used to determine the correlation between the urban texture and business hotspots of Macau and the new epidemic hotspot clusters. Different types of samples afforded different epidemic prediction accuracies. The results show the following: (1) CGAN can accurately predict the distribution area of COVID-19, and the accuracy can exceed 70%. (2) The results of predicting the COVID-19 distribution through urban texture and POI data of hospitals and stations are the best, with an accuracy of more than 60% in experiments in different regions of Macau. (3) The proposed method can also predict other areas in the city that may be at risk of COVID-19 and help urban epidemic prevention and control.
机器学习(ML)是一种广泛应用于数据预测的创新方法。利用机器学习预测新冠疫情分布对于城市安全风险评估和治理至关重要。本研究使用条件生成对抗网络(CGAN)构建一种通过城市纹理和商业形态预测新冠疫情热点分布的方法,并建立城市要素与新冠疫情之间的关系,以便机器能够自动预测城市中的疫情热点。以澳门为例,运用该方法确定澳门城市纹理和商业热点与新的疫情热点集群之间的相关性。不同类型的样本给出了不同的疫情预测准确率。结果表明:(1)CGAN能够准确预测新冠疫情的分布区域,准确率可超过70%。(2)通过城市纹理以及医院和车站的兴趣点(POI)数据预测新冠疫情分布的结果最佳,在澳门不同区域的实验中准确率超过60%。(3)所提出的方法还可以预测城市中其他可能存在新冠疫情风险的区域,并有助于城市疫情防控。