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Mechanically aspirated radiation shields: A CFD and neural network design analysis

机译:机械吸气式辐射防护罩:CFD和神经网络设计分析

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Accurate air temperature measurements made by surface meteorological stations are demanded by climate research programs for various uses. Heating of the temperature sensor due to coupling with the environment can lead to significant errors. Therefore, accurate in situ temperature measurements require shielding the sensor from exposure to direct and reflected solar radiation, while also allowing the sensor to be brought into contact with atmospheric air at the ambient temperature. The difficulty in designing a radiation shield for such a temperature sensor lies in satisfying these two conditions simultaneously. In this paper, we perform a computational fluid dynamics analysis of mechanically aspirated radiation shields (MARS) to study the effect of geometry, wind speed, and interplay of multiple heat transfer processes. Finally, an artificial neural network model is developed to learn the relationship between the temperature error and specified input variables. The model is then used to perform a sensitivity analysis and design optimization.
机译:气候研究计划要求各种用途的地面气象站进行准确的气温测量。由于与环境耦合,温度传感器的发热会导致严重的误差。因此,准确的原位温度测量需要屏蔽传感器,使其免受直接和反射的太阳辐射的照射,同时还允许传感器在环境温度下与大气接触。设计用于这种温度传感器的辐射屏蔽的困难在于同时满足这两个条件。在本文中,我们对机械吸气式辐射防护罩(MARS)进行了计算流体动力学分析,以研究几何形状,风速以及多个传热过程之间相互作用的影响。最后,开发了一个人工神经网络模型来学习温度误差和指定输入变量之间的关系。然后将模型用于执行灵敏度分析和设计优化。

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