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Hybrid model of the near-ground temperature profile

机译:近地温度剖面的混合模型

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The topic of the paper is modelling and prediction of atmospheric variables that are further used for prediction of the consequences of radioactive-material release to the atmosphere. Physics-based models of atmospheric dynamics provide an approximate description of the true nature of a dynamic system. However, the accuracy of the model's short-term predictions and long-term forecasts, especially over complex terrain, decreases when the information at a micro-location is sought. Integration of a physics-based model with a statistical model for enhancing the prediction power is proposed in the paper. Gaussian Processes models can be used to identify the mapping between the system input and output measured values. With the given mapping function, we can provide one-step ahead prediction of the system output values together with its uncertainty, which can be used advantageously. In this paper, we combine a physics-based model with a Gaussian-process model to identify air temperature from measurements at different atmospheric surface layers as a dynamic system and to make short-term predictions as well as long-term forecasts.
机译:本文的主题是大气变量的建模和预测,这些变量还用于预测放射性物质释放到大气中的后果。基于物理学的大气动力学模型提供了动力学系统真实性质的近似描述。但是,当在微位置寻找信息时,模型的短期预测和长期预测的准确性(特别是在复杂地形上)会降低。本文提出了基于物理学的模型与统计模型的集成,以增强预测能力。高斯过程模型可用于识别系统输入和输出测量值之间的映射。使用给定的映射功能,我们可以提供系统输出值的提前一步预测及其不确定性,可以方便地使用。在本文中,我们将基于物理学的模型与高斯过程模型相结合,以从作为动态系统的不同大气表层的测量中识别出气温,并进行短期预测和长期预测。

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