基于智能体的大规模流行病学模拟并行化

S. Fürst, C. Rakow
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引用次数: 0

摘要

基于主体的流行病学模型在SARS-CoV-2大流行期间得到了广泛成功的应用,并帮助决策者评估干预策略的有效性。基于智能体的模型的计算复杂性仍然具有挑战性,因此尽可能地利用现代多核系统是很重要的。在本文中,我们介绍了并行流行病学模拟模型MATSim Episim的工作。Episim将大规模以人为中心的人类活动模型与感染的机制模型和以人为中心的疾病进展模型相结合。一般来说,具有固有顺序结构的基于主体的模型的并行化-在流行病学模型的情况下,个体运动的时间顺序-是具有挑战性的。特别是当潜在的社会网络是不规则和动态的,它们需要处理元素之间频繁的通信。然而,在Episim,我们能够利用人们在被感染的同一天不会传染的事实,因此不需要立即进行卫生同步。通过并行化一些计算最密集的子模型,我们现在能够以比串行版本快8倍的速度运行MATSim Episim模拟。这使得增加agent的数量变得可行,比如模拟整个德国,而不是像以前那样只模拟柏林。©2022作者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallelization of large-scale agent-based epidemiological simulations
Agent-based epidemiological models have been applied widely successfully during the SARS-CoV-2 pandemic and assisted policymakers in assessing the effectiveness of intervention strategies. The computational complexity of agent-based models is still challenging, and therefore it is important to utilize modern multi-core systems as good as possible. In this paper, we are presenting our work on parallelizing the epidemiological simulation model MATSim Episim. Episim combines a large-scale person-centric human mobility model with a mechanistic model of infection and a person-centric disease progression model. In general, the parallelization of agent-based models with an inherent sequential structure — in the case of epidemiological models, the temporal order of the individual movements of the agents — is challenging. Especially when the underlying social network is irregular and dynamic, they require frequent communication between the processing elements. In Episim, however, we were able to take advantage of the fact that people are not contagious on the same day they become infected, and therefore immediate health synchronization is not required. By parallelizing some of the most computationally intensive submodels, we are now able to run MATSim Episim simulations up to eight times faster than the serial version. This makes it feasible to increase the number of agents, e.g. to run simulations for the whole of Germany instead of just Berlin as before. © 2022 The Authors.
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