Optimizing vaccine distribution in developing countries under natural disaster risk

Bonn Kleiford Seranilla, N. Löhndorf
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Abstract

For many developing countries, COVID‐19 vaccination roll‐out programs are not only slow but vaccination centers are also exposed to the risk of natural disaster, like flooding, which may slow down vaccination progress even further. Policy‐makers in developing countries therefore seek to implement strategies that hedge against distribution risk in order for vaccination campaigns to run smoothly and without delays. We propose a stochastic‐dynamic facility location model that allows policy‐makers to choose vaccination facilities while accounting for possible facility failure. The model is a multi‐stage stochastic variant of the classic facility location problem where disruption risk is modelled as a binary multivariate random process–a problem class that has not yet been studied in the extant literature. To solve the problem, we propose a novel approximate dynamic programming algorithm which trains the shadow price of opening a flood‐prone facility on historical data, thereby alleviating the need to fit a stochastic model. We trained the model using rainfall data provided by the local government of several major cities in the Philippines which are exposed to multiple flooding events per year. Numerical results demonstrate that the solution approach yields approximately 30%–40% lower cost than a baseline approach that does not consider the risk of flooding. Recommendations based on this model were implemented following a collaboration with two large cities in the Philippines which are exposed to multiple flooding events per year.
在面临自然灾害风险的发展中国家优化疫苗分配
对于许多发展中国家来说,COVID - 19疫苗接种规划不仅进展缓慢,而且疫苗接种中心还面临洪水等自然灾害的风险,这可能进一步减缓疫苗接种进展。因此,发展中国家的决策者寻求实施对冲分配风险的战略,以使疫苗接种运动顺利而不延误地进行。我们提出了一个随机动态设施选址模型,允许决策者在考虑可能的设施故障的情况下选择疫苗接种设施。该模型是经典设施选址问题的多阶段随机变体,其中中断风险被建模为二元多元随机过程-这类问题在现有文献中尚未研究过。为了解决这个问题,我们提出了一种新的近似动态规划算法,该算法根据历史数据训练开放洪水易发设施的影子价格,从而减轻了拟合随机模型的需要。我们使用菲律宾几个主要城市的当地政府提供的降雨数据来训练模型,这些城市每年都会遭受多次洪水事件。数值结果表明,该方法的成本比不考虑洪水风险的基准方法低30%-40%。基于这一模式的建议是在与菲律宾两个每年遭受多次洪灾的大城市合作后实施的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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