Jahanshahi Hadi, Munoz-Pacheco Jesus M, Bekiros Stelios, Alotaibi Naif D
Department of Mechanical Engineering, University of Manitoba, Winnipeg R3T 5V6, Canada.
Faculty of Electronics Sciences, Benemerita Universidad Autonoma de Puebla, 72570 Mexico.
Chaos Solitons Fractals. 2021 Feb;143:110632. doi: 10.1016/j.chaos.2020.110632. Epub 2021 Jan 10.
COVID-19 is a novel coronavirus affecting all the world since December last year. Up to date, the spread of the outbreak continues to complicate our lives, and therefore, several research efforts from many scientific areas are proposed. Among them, mathematical models are an excellent way to understand and predict the epidemic outbreaks evolution to some extent. Due to the COVID-19 may be modeled as a non-Markovian process that follows power-law scaling features, we present a fractional-order SIRD (Susceptible-Infected-Recovered-Dead) model based on the Caputo derivative for incorporating the memory effects (long and short) in the outbreak progress. Additionally, we analyze the experimental time series of 23 countries using fractal formalism. Like previous works, we identify that the COVID-19 evolution shows various power-law exponents (no just a single one) and share some universality among geographical regions. Hence, we incorporate numerous memory indexes in the proposed model, i.e., distinct fractional-orders defined by a time-dependent function that permits us to set specific memory contributions during the evolution. This allows controlling the memory effects of more early states, e.g., before and after a quarantine decree, which could be less relevant than the contribution of more recent ones on the current state of the SIRD system. We also prove our model with Italy's real data from the Center for Systems Science and Engineering (CSSE) at Johns Hopkins University.
新冠病毒病自去年12月以来一直影响着全球。截至目前,疫情的蔓延仍在持续扰乱我们的生活,因此,许多科学领域都提出了多项研究工作。其中,数学模型是在一定程度上理解和预测疫情爆发演变的绝佳方式。由于新冠病毒病可被建模为一个遵循幂律缩放特征的非马尔可夫过程,我们提出了一种基于卡普托导数的分数阶SIRD(易感-感染-康复-死亡)模型,以纳入疫情爆发过程中的记忆效应(长记忆和短记忆)。此外,我们使用分形形式分析了23个国家的实验时间序列。与之前的研究一样,我们发现新冠病毒病的演变呈现出各种幂律指数(不止一个),并且在不同地理区域之间具有一些普遍性。因此,我们在所提出的模型中纳入了众多记忆指数,即由一个时间相关函数定义的不同分数阶,这使我们能够在演变过程中设置特定的记忆贡献。这使得能够控制更早状态的记忆效应,例如在隔离令颁布之前和之后的状态,这些状态可能不如更近状态对SIRD系统当前状态的贡献那么重要。我们还用约翰·霍普金斯大学系统科学与工程中心的意大利实际数据验证了我们的模型。