Attention based Long Short-Term Memory Network for Coastal Visibility Forecast

Rui Min, Ming Wu, Mengqiu Xu, Xun Zu, Xun Zhu
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Abstract

Visibility prediction in coastal areas has always been an important issue affecting the safety of residents and the efficiency of urban transportation. The visibility prediction methods currently used by meteorological centers are mainly based on the statistical forecast with relatively low prediction accuracy and high computational complexity. These methods cannot work well with large amounts of data. However, with the rapid development of deep learning technology, the use of deep learning has become a primary trend. In this paper, we propose our visibility prediction model based on (Long Short-Term Memory) LSTM network and self-attention mechanism. The model takes Medium-range Forecasts Data from European Centre for Mediumrange Weather Forecasting (ECMWF) which we use EC data to refer it for simplicity and observatory visibility data as input to predict and uses the LSTM network as the backbone to extract time series information. We also use self-attention mechanism to process the input data before the data is input to the model to let the model better focus on the valuable information for prediction. Compared with the predicted visibility in EC data, our proposed method improved the 3-hour prediction accuracy by 20%, 1.5 times, and 8 times for high-range, medium-range, and low-range visibility, respectively. We also find the data imbalance will greatly affect the prediction accuracy for low-visibility data and use the weighted-loss and mix-up data augmentation strategy model in our model training. We improved the accuracy of low-visibility data by 1.2 times while the prediction results of high-visibility and medium-visibility data remained almost the same. In addition, we conduct several experiments to verify the effectiveness of our model design and the rationality of data augmentation.
基于注意的长短期记忆网络海岸带能见度预报
沿海地区能见度预报一直是影响居民安全和城市交通效率的重要问题。目前气象中心使用的能见度预报方法主要是基于统计预报,预报精度较低,计算复杂度较高。这些方法不能很好地处理大量数据。然而,随着深度学习技术的快速发展,深度学习的应用已成为主要趋势。本文提出了一种基于(长短期记忆)LSTM网络和自注意机制的可视性预测模型。该模型以欧洲中期天气预报中心(ECMWF)的中期天气预报数据(为简便起见,我们使用EC数据作为参考)和天文台能见度数据作为输入进行预测,并使用LSTM网络作为主干提取时间序列信息。在数据输入模型之前,我们还使用自注意机制对输入数据进行处理,让模型更好地关注有价值的信息进行预测。与EC数据的能见度预测相比,本文方法在高距离、中距离和低距离能见度的3小时预测精度分别提高了20%、1.5倍和8倍。我们还发现,对于低可见度数据,数据不平衡会极大地影响预测精度,并在模型训练中使用了加权损失和混合数据增强策略模型。我们将低能见度数据的预测精度提高了1.2倍,而高能见度和中能见度数据的预测结果基本保持不变。此外,我们还进行了多次实验,验证了模型设计的有效性和数据增强的合理性。
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