Kyriakou Charilaos, Georgoudas Ioakeim G, Papanikolaou Nick P, Sirakoulis Georgios Ch
Department of Electrical and Computer Engineering, Laboratory of Electronics, University Campus, Kimmeria, Xanthi, 67100 Greece.
Nat Comput. 2022;21(3):463-480. doi: 10.1007/s11047-022-09891-5. Epub 2022 Jun 22.
In this study, we introduce an application of a Cellular Automata (CA)-based system for monitoring and estimating the spread of epidemics in real world, considering the example of a Greek city. The proposed system combines cellular structure and graph representation to approach the connections among the area's parts more realistically. The original design of the model is attributed to a classical SIR (Susceptible-Infected-Recovered) mathematical model. Aiming to upgrade the application's effectiveness, we have enriched the model with parameters that advances its functionality to become self-adjusting and more efficient of approaching real situations. Thus, disease-related parameters have been introduced, while human interventions such as vaccination have been represented in algorithmic manner. The model incorporates actual geographical data (GIS, geographic information system) to upgrade its response. A methodology that allows the representation of any area with given population distribution and geographical data in a graph associated with the corresponding CA model for epidemic simulation has been developed. To validate the efficient operation of the proposed model and methodology of data display, the city of Eleftheroupoli, in Eastern Macedonia-Thrace, Greece, was selected as a testing platform (Eleftheroupoli, Kavala). Tests have been performed at both macroscopic and microscopic levels, and the results confirmed the successful operation of the system and verified the correctness of the proposed methodology.
在本研究中,我们以希腊一座城市为例,介绍一种基于细胞自动机(CA)的系统在现实世界中监测和估计流行病传播情况的应用。所提出的系统结合了细胞结构和图形表示,以便更真实地处理该区域各部分之间的联系。该模型的原始设计源自经典的SIR(易感-感染-康复)数学模型。为了提高应用的有效性,我们用一些参数丰富了模型,这些参数提升了其功能,使其能够自我调整并更有效地贴近实际情况。因此,引入了与疾病相关的参数,同时以算法方式表示了诸如疫苗接种等人为干预措施。该模型纳入了实际地理数据(GIS,地理信息系统)以提升其响应能力。已经开发出一种方法,能够在与用于流行病模拟的相应细胞自动机模型相关联的图形中,用给定的人口分布和地理数据表示任何区域。为了验证所提出模型和数据显示方法的高效运行,希腊东马其顿-色雷斯地区的埃莱夫塞罗乌波利市(埃莱夫塞罗乌波利,卡瓦拉)被选为测试平台。已经在宏观和微观层面进行了测试,结果证实了该系统的成功运行,并验证了所提出方法的正确性。