A Design of Activity-Based Mobility Intervention

Joon-Seok Kim, Gautam Thakur, S. C. Christopher
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Abstract

Human mobility influences our society and vice versa. During the COVID-19 pandemic, non-pharmaceutical intervention that alters activity-based mobility such as work-from-home greatly impacted human mobility patterns. Many studies on developing mitigation strategies have employed or implemented their own mobility intervention within their model assumption. For fair evaluation between intervention strategies across models, it is significant to set up compatible experimental environments. However, it is difficult to apply the identical intervention to different kinds of models and compare their effectiveness because each model might have different assumptions, capabilities, and implementations. Even if one can apply intervention to heterogeneous models, it may produce undesirable artifacts due to difference of models and integration with intervention. Therefore, minimizing undesirable artifacts and facilitating intervention experiments across heterogeneous models are substantial. Taking this into account, this paper investigates a design of activity-based mobility intervention (ABMI). We define ABMI together with related concepts and develop an extensible data model and schema of ABMI based on the 5W1H method that can be used in different models. As a case study, we apply the ABMI model to a micro-simulation to demonstrate the usability of the proposed model. We expect that standardized ABMI and interfaces may help to streamline development and experiments of intervention strategies across heterogeneous models.
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基于活动的流动性干预设计
人类的流动性影响着我们的社会,反之亦然。在2019冠状病毒病大流行期间,改变以活动为基础的流动性(如在家工作)的非药物干预措施极大地影响了人类的流动性模式。许多关于制定缓解战略的研究在其模型假设范围内采用或实施了自己的流动性干预措施。为了对不同模型的干预策略进行公平的评价,建立兼容的实验环境具有重要意义。然而,很难将相同的干预应用于不同类型的模型并比较它们的有效性,因为每个模型可能具有不同的假设、能力和实现。即使可以将干预应用于异构模型,也可能由于模型的差异和与干预的集成而产生不希望的工件。因此,最小化不需要的工件和促进跨异构模型的干预实验是重要的。考虑到这一点,本文研究了基于活动的流动性干预(ABMI)的设计。我们定义了ABMI及其相关概念,并基于5W1H方法开发了可扩展的ABMI数据模型和模式,可用于不同的模型。作为一个案例研究,我们将ABMI模型应用于微观模拟,以证明所提出模型的可用性。我们期望标准化的ABMI和接口可以帮助简化跨异构模型的干预策略的开发和实验。
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