During the Covid-19 pandemic, most governments across the world imposed policies like lock-down of public spaces and restrictions on people's movements to minimize the spread of the virus through physical contact. However, such policies have grave social and economic costs, and so it is important to pre-assess their impacts. In this work we aim to visualize the dynamics of the pandemic in a city under different intervention policies, by simulating the behavior of the residents. We develop a very detailed agent-based model for a city, including its residents, physical and social spaces like homes, marketplaces, workplaces, schools/colleges etc. We parameterize our model for Kolkata city in India using ward-level demographic and civic data. We demonstrate that under appropriate choice of parameters, our model is able to reproduce the observed dynamics of the Covid-19 pandemic in Kolkata, and also indicate the counter-factual outcomes of alternative intervention policies.
翻译:在Covid-19大流行期间,世界上大多数政府都推行了封锁公共空间和限制人民行动等政策,以通过身体接触最大限度地减少病毒的传播;然而,这种政策具有严重的社会和经济代价,因此必须预先评估其影响。在这项工作中,我们的目标是通过模拟居民的行为,根据不同的干预政策来设想该流行病在城市的动态。我们为城市制定了非常详细的代理模式,包括城市居民、有形和社会空间,如住宅、市场、工作场所、学校/学院等。我们利用病房人口和公民数据,将我们在印度加尔各答市的模型作为参数。我们证明,在适当选择参数的情况下,我们的模型能够复制加尔各答的Covid-19大流行所观察到的动态,并表明替代干预政策的反实际结果。