Cellular automata in the light of COVID-19

Sourav Chowdhury, Suparna Roychowdhury, Indranath Chaudhuri
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Abstract

Currently, the world has been facing the brunt of a pandemic due to a disease called COVID-19 for the last 2 years. To study the spread of such infectious diseases it is important to not only understand their temporal evolution but also the spatial evolution. In this work, the spread of this disease has been studied with a cellular automata (CA) model to find the temporal and the spatial behavior of it. Here, we have proposed a neighborhood criteria which will help us to measure the social confinement at the time of the disease spread. The two main parameters of our model are (i) disease transmission probability (q) which helps us to measure the infectivity of a disease and (ii) exponent (n) which helps us to measure the degree of the social confinement. Here, we have studied various spatial growths of the disease by simulating this CA model. Finally we have tried to fit our model with the COVID-19 data of India for various waves and have attempted to match our model predictions with regards to each wave to see how the different parameters vary with respect to infectivity and restrictions in social interaction.
基于COVID-19的细胞自动机
目前,由于一种名为COVID-19的疾病,世界在过去两年中一直面临着大流行的冲击。研究这类传染病的传播不仅要了解它们的时间演变,而且要了解它们的空间演变。在这项工作中,我们用细胞自动机(CA)模型研究了这种疾病的传播,以找到它的时间和空间行为。在这里,我们提出了一个邻里标准,这将有助于我们衡量疾病传播时的社会限制。我们模型的两个主要参数是(i)疾病传播概率(q),这有助于我们衡量疾病的传染性;(ii)指数(n),这有助于我们衡量社会限制的程度。在这里,我们通过模拟这个isca模型来研究疾病的各种空间生长。最后,我们试图将我们的模型与印度各波的COVID-19数据拟合,并试图将我们的模型预测与每波相匹配,以了解不同参数在传染性和社会互动限制方面的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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