Pourroostaei Ardakani Saeid, Xia Tianqi, Cheshmehzangi Ali, Zhang Zhiang
Department of Computer Science, University of Nottingham, Ningbo, 315100 China.
Department of Architecture and Built Environment, University of Nottingham, Ningbo, 315100 China.
Genus. 2022;78(1):28. doi: 10.1186/s41118-022-00174-6. Epub 2022 Sep 5.
The world still suffers from the COVID-19 pandemic, which was identified in late 2019. The number of COVID-19 confirmed cases are increasing every day, and many governments are taking various measures and policies, such as city lockdown. It seriously treats people's lives and health conditions, and it is highly required to immediately take appropriate actions to minimise the virus spread and manage the COVID-19 outbreak. This paper aims to study the impact of the lockdown schedule on pandemic prevention and control in Ningbo, China. For this, machine learning techniques such as the K-nearest neighbours and Random Forest are used to predict the number of COVID-19 confirmed cases according to five scenarios, including no lockdown and 2 weeks, 1, 3, and 6 months postponed lockdown. According to the results, the random forest machine learning technique outperforms the K-nearest neighbours model in terms of mean squared error and R-square. The results support that taking an early lockdown measure minimises the number of COVID-19 confirmed cases in a city and addresses that late actions lead to a sharp COVID-19 outbreak.
世界仍在遭受2019年末被发现的新冠疫情的影响。新冠确诊病例数量每天都在增加,许多政府正在采取各种措施和政策,比如城市封锁。这严重威胁着人们的生命和健康状况,迫切需要立即采取适当行动,以尽量减少病毒传播并应对新冠疫情爆发。本文旨在研究封锁时间表对中国宁波疫情防控的影响。为此,使用了诸如K近邻和随机森林等机器学习技术,根据五种情景预测新冠确诊病例数,这五种情景包括不封锁以及封锁推迟2周、1个月、3个月和6个月。根据结果,在均方误差和决定系数方面,随机森林机器学习技术优于K近邻模型。结果表明,尽早采取封锁措施可将城市中的新冠确诊病例数降至最低,并表明行动迟缓会导致新冠疫情急剧爆发。