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Prediction of Wind Speed and Direction using Encoding - forecasting Network with Convolutional Long Short-term Memory

机译:卷积长短期记忆的编码预报网络对风速和风向的预测。

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This paper presents the prediction system of wind speed and direction one hour ahead using encoding-forecasting network with convolutional long short-term memory (ConvLSTM). The input of prediction system is wind speed and direction which are represented as image data on the 2D coordinate and provided by Automated Meteorological Data Acquisition System (AMeDAS) in Japan. Performances of the proposed prediction system are evaluated based on root mean square error (RMSE) between observed and predicted value. The goal of the proposed prediction system is to improve prediction accuracy and it is confirmed by comparing the result of the prediction system of four seasons.
机译:本文利用带卷积长短期记忆的编码预测网络(ConvLSTM),提出了一种提前一个小时的风速和风向预测系统。预测系统的输入是风速和风向,它们表示为2D坐标上的图像数据,由日本的自动气象数据采集系统(AMeDAS)提供。基于观察值和预测值之间的均方根误差(RMSE),对所提出的预测系统的性能进行评估。所提出的预测系统的目的是提高预测准确性,并且通过比较四个季节的预测系统的结果来证实这一点。

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