Abstract:Gale weather can easily cause highspeed train accidents such as derailment and rollover. Therefore, the ultra shortterm prediction of wind speed is of great significance for the safe operation of highspeed rail. A prediction model based on long shortterm memory (LSTM) networks is proposed in this paper. The maximum wind speed data per minute collected by WindLog wind speed sensor is preprocessed. The proposed model was trained using wind speed data of Haidian District, and the wind speeds 1, 5 and 10 min ahead were predicted. The mean absolute error (MAE) of 1min ahead prediction was 0467 m/s with the accuracy rate of 100%. The MAE of 5 min ahead prediction is 0543 m/s with the accuracy rate of 996%, the MAE of 10 min ahead prediction is 0627 m/s, and the accuracy rate was 988%. The experimental results show that the prediction model has better adaptability and higher prediction accuracy.