论文标题
在Covid-19期间的医疗采购中平衡常见治疗和流行控制:转化和偏见的进化优化
Balancing Common Treatment and Epidemic Control in Medical Procurement during COVID-19: Transform-and-Divide Evolutionary Optimization
论文作者
论文摘要
平衡普通疾病治疗和流行病控制是医院在Covid-19等大流行期间采购的关键目标。该问题可以作为双向目标优化问题,以同时优化普通疾病治疗和流行病的影响。但是,由于供应量大量,评估效果的困难以及严格的预算限制,因此现有的进化多物镜算法很难有效地近似问题的帕累托阵线。在本文中,我们提出了一种方法,该方法首先将原始的高维,受约束的多目标优化问题转换为低维,不受约束的多目标优化问题,然后通过将一组简单的单目标优化子问题求解,从而可以通过现有的多个求解方法来评估转换问题的每个解决方案。在Covid-19的高峰期间,我们对中国省省省的六家医院应用了转型和范围的进化优化方法。结果表明,所提出的方法的性能明显优于直接解决原始问题的性能。我们的研究还表明,基于特定于问题的知识的转换和界定进化优化可能是针对许多其他复杂问题的有效解决方案方法,因此扩大了进化算法的应用领域。
Balancing common disease treatment and epidemic control is a key objective of medical supplies procurement in hospitals during a pandemic such as COVID-19. This problem can be formulated as a bi-objective optimization problem for simultaneously optimizing the effects of common disease treatment and epidemic control. However, due to the large number of supplies, difficulties in evaluating the effects, and the strict budget constraint, it is difficult for existing evolutionary multiobjective algorithms to efficiently approximate the Pareto front of the problem. In this paper, we present an approach that first transforms the original high-dimensional, constrained multiobjective optimization problem to a low-dimensional, unconstrained multiobjective optimization problem, and then evaluates each solution to the transformed problem by solving a set of simple single-objective optimization subproblems, such that the problem can be efficiently solved by existing evolutionary multiobjective algorithms. We applied the transform-and-divide evolutionary optimization approach to six hospitals in Zhejiang Province, China, during the peak of COVID-19. Results showed that the proposed approach exhibits significantly better performance than that of directly solving the original problem. Our study has also shown that transform-and-divide evolutionary optimization based on problem-specific knowledge can be an efficient solution approach to many other complex problems and, therefore, enlarge the application field of evolutionary algorithms.