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Particle Swarm Optimization Algorithm for Optimizing Assignment of Blood in Blood Banking System

机译:粒子群优化算法在血库系统中优化血液分配

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摘要

This paper reports the performance of particle swarm optimization (PSO) for the assignment of blood to meet patients' blood transfusion requests for blood transfusion. While the drive for blood donation lingers, there is need for effective and efficient management of available blood in blood banking systems. Moreover, inherent danger of transfusing wrong blood types to patients, unnecessary importation of blood units from external sources, and wastage of blood products due to nonusage necessitate the development of mathematical models and techniques for effective handling of blood distribution among available blood types in order to minimize wastages and importation from external sources. This gives rise to the blood assignment problem (BAP) introduced recently in literature. We propose a queue and multiple knapsack models with PSO-based solution to address this challenge. Simulation is based on sets of randomly generated data that mimic real-world population distribution of blood types. Results obtained show the efficiency of the proposed algorithm for BAP with no blood units wasted and very low importation, where necessary, from outside the blood bank. The result therefore can serve as a benchmark and basis for decision support tools for real-life deployment.
机译:本文报告了粒子群优化(PSO)在分配血液以满足患者输血对输血要求方面的性能。尽管献血的动力持续存在,但仍需要对储血系统中可用血液进行有效的管理。此外,将错误的血液类型输给患者的固有危险,从外部来源不必要地输入血液单位以及由于不使用而造成的血液制品浪费,需要开发数学模型和技术来有效处理可用血液类型之间的血液分配,以便尽量减少浪费和从外部来源的进口。这引起了最近在文献中引入的血液分配问题(BAP)。我们提出了一个队列和多个背包模型以及基于PSO的解决方案来应对这一挑战。模拟基于随机生成的数据集,这些数据模仿了现实世界中血型的分布。获得的结果表明,所提出的BAP算法的效率没有浪费的血液单位,并且在必要时从血库外部的进口非常低。因此,结果可以作为实际部署的决策支持工具的基准和基础。

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