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A priori assessment of a smart-navigated unmanned aerial vehicle disaster cargo fleet

机译:先验评估智能导航的无人机灾难货物舰队

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The United Nations Office for the Coordination of Humanitarian Affairs has asserted that risks in deployment of unmanned aerial vehicles (UAVs) within disaster response must be reduced by careful development of best-practice standards before implementing such systems. With recent humanitarian field tests of cargo UAVs as indication that implementation may soon become reality, a priori assessment of a smart-navigated (autonomous) UAV disaster cargo fleet via simulation modeling and analysis is vital to the best-practice development process. Logistical problems with ground transport of relief supplies in Puerto Rico after Hurricane Maria (2017) pose a compelling use scenario for UAV disaster cargo delivery. In this context, we introduce a General Purpose Assessment Model (GPAM) that can estimate the potential effectiveness of a cargo UAV fleet for any given response region. We evaluate this model using the following standards: (i) realistic specifications; (ii) stable output for various realistic specifications; and (iii) support of humanitarian goals. To this end, we discuss data from humanitarian cargo delivery field tests and feedback from practitioners, perform sensitivity analyses, and demonstrate the advantage of using humanitarian rather than geographic distance in making fleet delivery assignments. We conclude with several major challenges faced by those who wish to implement smart-navigated UAV cargo fleets in disaster response, and the need for further GPAM development. This paper proposes the GPAM as a useful simulation tool to encourage and guide steps toward humanitarian use of UAVs for cargo delivery. The model's flexibility can allow organizations to quickly and effectively determine how best to respond to disasters.
机译:联合国人道主义事务协调办公室断言,在实施此类系统之前,必须通过仔细制定最佳实践标准,减少灾害响应内无人机(无人机)的风险。随着最近的货物现场测试货物无人机作为迹象表明,实施可能很快成为现实,通过仿真建模和分析对智能导航(自主)UAV灾难货船的先验评估对最佳实践的开发过程至关重要。 Puerto Rico地面运输的后勤问题在飓风玛丽亚(2017年)在澳大利亚飓风(2017)造成了令人沮丧的使用场景,适合UAV灾难货物交付。在这种情况下,我们介绍了一般的评估模型(GPAM),可以估计任何给定的响应区域的货物UAV车队的潜在效力。我们使用以下标准评估此模型:(i)现实规格; (ii)各种现实规格的稳定产量; (iii)支持人道主义目标。为此,我们讨论从人道主义货物交付现场测试和从事从业者的反馈,执行敏感性分析的数据,并展示使用人道主义而不是在制作舰队交付分配时的地理距离的优势。我们的结论,希望在灾害反应中实施智能导航的UAV货船的人面临的几项重大挑战,以及需要进一步的GPAM发展。本文提出了GPAM作为一个有用的模拟工具,以鼓励和指导对无人机的人道主义使用的步骤进行货物交付。该模型的灵活性可以允许组织快速有效地确定如何应对灾害。

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