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Weather field reconstruction using aircraft surveillance data and a novel meteo-particle model

机译:利用飞机监视数据和新型流星粒子模型重建气象场

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摘要

Wind and temperature data are important parameters in aircraft performance studies. The lack of accurate measurements of these parameters forces researchers to rely on numerical weather prediction models, which are often filtered for a larger area with decreased local accuracy. Aircraft, however, also transmit information related to weather conditions, in response to interrogation by air traffic controller surveillance radars. Although not intended for this purpose, aircraft surveillance data contains information that can be used for weather models. This paper presents a method that can be used to reconstruct a weather field from surveillance data that can be received with a simple 1090 MHz receiver. Throughout the paper, we answer two main research questions: how to accurately infer wind and temperature from aircraft surveillance data, and how to reconstruct a real-time weather grid efficiently. We consider aircraft as moving sensors that measure wind and temperature conditions indirectly at different locations and flight levels. To address the first question, aircraft barometric altitude, ground velocity, and airspeed are decoded from down-linked surveillance data. Then, temperature and wind observations are computed based on aeronautical speed conversion equations. To address the second question, we propose a novel Meteo-Particle (MP) model for constructing the wind and temperature fields. Short-term local prediction is also possible by employing a predictor layer. Using an unseen observation test dataset, we are able to validate that the mean absolute errors of inferred wind and temperature using MP model are 67% and 26% less than using the interpolated model based on GFS reanalysis data.
机译:风和温度数据是飞机性能研究中的重要参数。这些参数缺乏精确的测量值,迫使研究人员不得不依靠数值天气预报模型,这些模型通常会以较大的局部精度进行过滤以过滤较大的区域。然而,响应空中交通管制员监视雷达的询问,飞机也发送与天气状况有关的信息。尽管不打算用于此目的,但飞机监视数据包含可用于天气模型的信息。本文提出了一种可用于通过可通过简单的1090 MHz接收机接收的监视数据来重建天气场的方法。在本文中,我们回答了两个主要的研究问题:如何从飞机监视数据中准确推断风和温度,以及如何高效地构建实时天气网格。我们将飞机视为移动传感器,可间接测量不同位置和飞行水平的风和温度条件。为了解决第一个问题,从下行监视数据中解码飞机的大气高度,地面速度和空速。然后,根据航空速度转换方程式计算温度和风的观测值。为了解决第二个问题,我们提出了一种新颖的Meteo-Particle(MP)模型,用于构造风场和温度场。通过采用预测层也可以进行短期局部预测。使用看不见的观测测试数据集,我们能够验证使用MP模型推断的风和温度的平均绝对误差分别比使用基于GFS重新分析数据的插值模型少67%和26%。

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