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Enhancing Radiation Detection by Drones through Numerical Fluid Dynamics Simulations

机译:通过数值流体动力学模拟增强无人机的辐射探测

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摘要

This study addresses the optimization of the location of a radioactive-particle sensor on a drone. Based on the analysis of the physical process and of the boundary conditions introduced in the model, computational fluid dynamics simulations were performed to analyze how the turbulence caused by drone propellers may influence the response of the sensors. Our initial focus was the detection of a small amount of radioactivity, such as that associated with a release of medical waste. Drones equipped with selective low-cost sensors could be quickly sent to dangerous areas that first responders might not have access to and be able to assess the level of danger in a few seconds, providing details about the source terms to Radiological-Nuclear (RN) advisors and decision-makers. Our ultimate application is the simulation of complex scenarios where fluid-dynamic instabilities are combined with elevated levels of radioactivity, as was the case during the Chernobyl and Fukushima nuclear power plant accidents. In similar circumstances, accurate mapping of the radioactive plume would provide invaluable input-data for the mathematical models that can predict the dispersion of radioactivity in time and space. This information could be used as input for predictive models and decision support systems (DSS) to get a full situational awareness. In particular, these models may be used either to guide the safe intervention of first responders or the later need to evacuate affected regions.
机译:这项研究致力于优化无人机上放射性粒子传感器的位置。基于对模型中引入的物理过程和边界条件的分析,进行了计算流体动力学仿真,以分析无人机螺旋桨引起的湍流如何影响传感器的响应。我们最初的重点是检测少量放射性,例如与医疗废物释放相关的放射性。配备有选择性低成本传感器的无人机可以迅速发送到急救人员可能无法到达并能够在几秒钟内评估危险等级的危险区域,并提供有关放射-核(RN)来源条款的详细信息顾问和决策者。我们的最终应用是模拟复杂的场景,在这些场景中,流体动力不稳定性与放射性水平升高相结合,例如切尔诺贝利核电站和福岛核电站事故。在类似情况下,放射性羽流的精确映射将为数学模型提供宝贵的输入数据,这些数学模型可以预测放射性在时间和空间上的扩散。此信息可用作预测模型和决策支持系统(DSS)的输入,以获取全面的态势感知。特别是,这些模型可以用于指导第一响应者的安全干预,也可以用于后期撤离受影响地区的需求。

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