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MLC-LSTM: Exploiting the Spatiotemporal Correlation between Multi-Level Weather Radar Echoes for Echo Sequence Extrapolation

机译:MLC-LSTM:利用多级天气雷达回波之间的时空相关性进行回波序列外推

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摘要

Weather radar echo is the data detected by the weather radar sensor and reflects the intensity of meteorological targets. Using the technique of radar echo extrapolation, which is the prediction of future echoes based on historical echo observations, the approaching short-term weather conditions can be forecasted, and warnings can be raised with regard to disastrous weather. Recently, deep learning based extrapolation methods have been proposed and show significant application potential. However, there are two limitations of existing extrapolation methods which should be considered. First, few methods have investigated the impact of the evolutionary process of weather systems on extrapolation accuracy. Second, current deep learning methods usually encounter the problem of blurry echo prediction as extrapolation goes deeper. In this paper, we aim to address the two problems by proposing a Multi-Level Correlation Long Short-Term Memory (MLC-LSTM) and integrate the adversarial training into our approach. The MLC-LSTM can exploit the spatiotemporal correlation between multi-level radar echoes and model their evolution, while the adversarial training can help the model extrapolate realistic and sharp echoes. To train and test our model, we build a real-life multi-level weather radar echoes dataset based on raw CINRAD/SA radar observations provided by the National Meteorological Information Center, China. Extrapolation experiments show that our model can accurately forecast the motion and evolution of an echo while keeping the predicted echo looking realistic and fine-grained. For quantitative evaluation on probability of detection (POD), false alarm rate (FAR), critical success index (CSI), and Heidke skill score (HSS) metrics, our model can reach average scores of 0.6538 POD, 0.2818 FAR, 0.5348 CSI, and 0.6298 HSS, respectively when extrapolating 15 echoes into the future, which outperforms the current state-of-the-art extrapolation methods. Both the qualitative and quantitative experimental results demonstrate the effectiveness of our model, suggesting that it can be effectively applied to operational weather forecasting practice.
机译:天气雷达回波是由天气雷达传感器检测到的数据,并反映气象目标的强度。使用雷达回声外推技术,即基于历史回声观测结果对未来回声进行预测,可以预测即将到来的短期天气状况,并可以针对灾难性天气提出警告。最近,已经提出了基于深度学习的外推方法,并显示出巨大的应用潜力。但是,应考虑现有外推方法的两个局限性。首先,很少有方法研究天气系统的演化过程对外推精度的影响。其次,随着外推法的深入,当前的深度学习方法通​​常会遇到回声预测模糊的问题。在本文中,我们旨在通过提出多级关联长期短期记忆(MLC-LSTM)来解决这两个问题,并将对抗训练融入我们的方法中。 MLC-LSTM可以利用多级雷达回波之间的时空相关性并对它们的演化进行建模,而对抗训练则可以帮助模型推断出真实而尖锐的回波。为了训练和测试我们的模型,我们基于中国国家气象信息中心提供的原始CINRAD / SA雷达观测数据,构建了一个真实的多级天气雷达回波数据集。外推实验表明,我们的模型可以准确预测回声的运动和演变,同时保持预测的回声看起来逼真且细粒度。对于检测概率(POD),误报率(FAR),关键成功指数(CSI)和海德克技能得分(HSS)指标的定量评估,我们的模型可以达到0.6538 POD,0.2818 FAR,0.5348 CSI的平均得分,以及在将来向未来外推15个回波时的0.6298 HSS,其性能优于当前最新的外推方法。定性和定量实验结果均证明了该模型的有效性,表明该模型可以有效地应用于运营天气预报实践。

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