Simulation input modelling in the absence of historical data for decision support during crises: Experience with assessing demand uncertainties for simulating walk-through testing in the early waves of COVID-19
针对危机中缺乏历史数据时仿真输入建模的难题,提出结合不确定性启发、数学评分规则和问题结构化与离散事件仿真的迭代多方法框架,并以COVID-19步行检测排队风险为例验证。
During the early waves of COVID-19, a frequent modelling challenge for OR practitioners was the lack of relevant historical data on important model inputs, such as uncertainty distributions. This is common and often critical in OR projects that support decision-making during new crises, in the aftermath of disasters, and generally, when modelling systems that are new or currently do not exist. Guidance for OR practitioners on systematic approaches for this modelling challenge is generally limited, and, in particular, omits important aspects of OR projects that support decisions during crises. These include, e.g., requiring urgent decision support, possible extreme parameter values, only a few experts being available. This paper proposes a novel iterative multi-method framework to address this gap in the literature. Our framework combines uncertainty elicitation, mathematical scoring rules and problem structuring with Discrete Event Simulation, with a focus on crisis decision-making. It provides optimised and transparent weighted combinations for simulation parameters. Our case study is motivated by our experience of simulation modelling during the early COVID-19 pandemic. We faced this modelling challenge for arrival number uncertainties when building a simulation of “no appointment necessary” COVID-19 walk-through testing to provide decision-makers with a better understanding of long waiting time risks.