在疫情暴发期间设计无人机辅助样本采集和检测系统

IF 3.8 Q2 MANAGEMENT
Sayan Chakraborty, Raviarun A. Nadar, Aviral Tiwari
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引用次数: 1

摘要

目的管理大流行疫情的一个主要组成部分是对疑似个体进行检测并对其进行隔离,以避免在社区中传播。这就需要建立诊断受感染个体的检测中心,这通常涉及患者从住所转移到检测中心或人员探望患者,从而将传播风险聚集到地方和检测中心。本文的目的是通过开发无人机辅助样本收集和诊断系统来调查和减少这种运动。设计/方法/方法对疫情的有效控制要求迅速作出反应,并涉及对疑似个体进行检测和隔离,以避免在社区中传播。本文以两阶段的方式提出问题,即定位样本收集中心,同时为这些收集中心分配社区,然后将收集中心分配到最近的测试中心。为了求解数学模型,本研究建立了一个混合整数线性规划模型,并提出了一种结合局部搜索方法(GA-LS)的综合遗传算法来求解该问题。该方法以印度城市加尔各答的一个案例问题为例进行了验证。计算结果表明,该方法能在较短的时间内得到高质量的解,有助于在大流行情况下的实用性。社会影响2019冠状病毒病大流行表明,传染病的大规模爆发可能需要限制行动,以控制指数传播。本文提出了一种临床样本采集中心的定位系统,通过这种方式,无人机可以用于将样本从附近运送到测试中心。独创性/价值流行病爆发是世界各地大量死亡背后的一个原因。本研究解决了在主要城市确定无人机辅助测试临时样本收集中心位置的关键问题,这是其性质独特的,并且没有被任何其他先前的文献考虑过。这项研究的结果将对决策者建立更强大的流行病抵抗力特别感兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing a drone assisted sample collection and testing system during epidemic outbreaks
Purpose A major component in managing pandemic outbreaks involves testing the suspected individuals and isolating them to avoid transmission in the community. This requires setting up testing centres for diagnosis of the infected individuals, which usually involves movement of either patient from their residence to the testing centre or personnel visiting the patient, thus aggregating the risk of transmission to localities and testing centres. The purpose of this paper is to investigate and minimize such movements by developing a drone assisted sample collection and diagnostic system. Design/methodology/approach Effective control of an epidemic outbreak calls for a rapid response and involves testing suspected individuals and isolating them to avoid transmission in the community. This paper presents the problem in a two-phase manner by locating sample collection centres while assigning neighbourhoods to these collection centres and thereafter, assigning collection centres to nearest testing centres. To solve the mathematical model, this study develops a mixed-integer linear programming model and propose an integrated genetic algorithm with a local search-based approach (GA-LS) to solve the problem. Findings Proposed approach is demonstrated as a case problem in an Indian urban city named Kolkata. Computational results show that the integrated GA-LS approach is capable of producing good quality solutions within a short span of time, which aids to the practicality in the circumstance of a pandemic. Social implications The COVID-19 pandemic has shown that the large-scale outbreak of a transmissible disease may require a restriction of movement to take control of the exponential transmission. This paper proposes a system for the location of clinical sample collection centres in such a way that drones can be used for the transportation of samples from the neighbourhood to the testing centres. Originality/value Epidemic outbreaks have been a reason behind a major number of deaths across the world. The present study addresses the critical issue of identifying locations of temporary sample collection centres for drone assisted testing in major cities, which is by its nature unique and has not been considered by any other previous literature. The findings of this study will be of particular interest to the policy-makers to build a more robust epidemic resistance.
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来源期刊
CiteScore
9.40
自引率
0.00%
发文量
31
期刊介绍: The Journal of Global Operations and Strategic Sourcing aims to foster and lead the international debate on global operations and strategic sourcing. It provides a central, authoritative and independent forum for the critical evaluation and dissemination of research and development, applications, processes and current practices relating to sourcing strategically for products, services, competences and resources on a global scale and to designing, implementing and managing the resulting global operations. Journal of Global Operations and Strategic Sourcing places a strong emphasis on applied research with relevant implications for both knowledge and practice. Also, the journal aims to facilitate the exchange of ideas and opinions on research projects and issues. As such, on top of a standard section publishing scientific articles, there will be two additional sections: "The Industry ViewPoint": in this section, industrial practitioners from around the world will be invited (max 2 contributions per issue) to present their point of view on a relevant subject area. This is intended to give the journal not just an academic focus, but a practical focus as well. In this way, we intend to reflect a trend that has characterised the past few decades, where interests and initiatives in research, academia and industry have been more and more converging to the point of collaborative relationships being a common practice. "Research Updates - Executive Summaries". In this section, researchers around the world will be given the opportunity to present their research projects in the area of global sourcing and outsourcing by means of an executive summary of their project. This will increase awareness of the on-going research projects in the area and it will attract interest from industry.
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