Machine Learning Forecast of Dust Storm Frequency in Saudi Arabia Using Multiple Features

Atmosphere Pub Date : 2024-04-24 DOI:10.3390/atmos15050520
Reem K. Alshammari, Omer Alrwais, Mehmet Sabih Aksoy
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Abstract

Dust storms are significant atmospheric events that impact air quality, public health, and visibility, especially in arid Saudi Arabia. This study aimed to develop dust storm frequency predictions for Riyadh, Jeddah, and Dammam by integrating meteorological and environmental variables. Our models include multiple linear regression, support vector machine, gradient boosting regression tree, long short-term memory (LSTM), and temporal convolutional network (TCN). This study highlights the effectiveness of LSTM and TCN models in capturing the complex temporal dynamics of dust storms and demonstrates that they outperform traditional methods, as evidenced by their lower mean absolute error (MAE) and root mean square error (RMSE) values and higher R2 score. In Riyadh, the TCN model demonstrates its remarkable performance, with an R2 score of 0.51, an MAE of 2.80, and an RMSE of 3.48, highlighting its precision, adaptability, and responsiveness to changes in dust storm frequency. Conversely, in Dammam, the LSTM model proved to be the most accurate, achieving an MAE of 3.02, RMSE of 3.64, and R2 score of 0.64. In Jeddah, the LSTM model also exhibited an MAE of 2.48 and an RMSE of 2.96. This research shows the potential of using deep learning models to improve the accuracy and reliability of dust storm frequency forecasts.
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利用多种特征对沙特阿拉伯沙尘暴频率进行机器学习预测
沙尘暴是影响空气质量、公众健康和能见度的重大大气事件,尤其是在干旱的沙特阿拉伯。本研究旨在通过整合气象和环境变量,对利雅得、吉达和达曼的沙尘暴频率进行预测。我们的模型包括多元线性回归、支持向量机、梯度提升回归树、长短期记忆(LSTM)和时序卷积网络(TCN)。本研究强调了 LSTM 和 TCN 模型在捕捉沙尘暴复杂的时间动态方面的有效性,并证明它们优于传统方法,其较低的平均绝对误差 (MAE) 值和均方根误差 (RMSE) 值以及较高的 R2 得分就是证明。在利雅得,TCN 模型表现出色,R2 得分为 0.51,平均绝对误差为 2.80,均方根误差为 3.48,突显了其精确性、适应性和对沙尘暴频率变化的响应能力。相反,在达曼,LSTM 模型被证明是最准确的,其 MAE 为 3.02,RMSE 为 3.64,R2 为 0.64。在吉达,LSTM 模型的 MAE 也达到了 2.48,RMSE 为 2.96。这项研究表明,使用深度学习模型可以提高沙尘暴频率预报的准确性和可靠性。
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