撒哈拉以南非洲选定气象站的气象数据预测:利用机器学习算法

Segun B. Adebayo, F. O. Aweda, I. A. Ojedokun, James A. Agbolade
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引用次数: 0

摘要

本研究利用机器学习算法方法对尼日利亚五个选定气象站的选定气象数据预测进行了调查。利用温度、风速、风向和相对湿度等天气参数来预测降雨量,探索了机器学习算法。在结果中,五个高斯模型(即有理二次、平方指数、Matern 5/2、指数和优化GPR)显示了不同的均方根误差(RMSE)、均方误差(MSE)和均绝对误差(MAE),预测速度在15000到26000之间,训练时间分别为7.936、1.8923、2.3701、3.267和282.19。两个模型的预测响应相对于真实响应显示了一个通过原点的线性图,这证实了一个完美的回归模型,其中所有点都位于对角线上。因此,不同模型的MSE、MAE和RMSE之间的关系表明,与其他模型相比,优化的GPR具有更好的性能。更重要的是,可视化输出变量(降雨量)和每个输入变量之间的关系表明,一些输入变量(相对湿度、降雨量、压力、风速和方向)与输出变量(降雨)具有很强的相关性,而另一些则具有不太清楚的噪声关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Meteorological data prediction over selected stations in Sub-Sahara Africa: Leveraging on Machine Learning Algorithm
This study investigated selected meteorological data prediction leveraging on a Machine Learning Algorithm Approach over five selected stations in Nigeria. The algorithm of Machine Learning was explored using weather parameters such as temperature, wind speed, wind direction and relative humidity to predict the rainfall rate. In the results, five Gaussian models (i.e., Rational Quadratic, Squared Exponential, Matern 5/2, Exponential and Optimized GPR) revealed different Root Mean Square Error (RMSE), Mean Square Error (MSE), and Mean Absolute Error (MAE) with prediction speeds ranging from 15000 to 26000 and the training time included 7.936, 1.8923, 2.3701, 3.267 and 282.19, respectively. The predicted response as against the true response for the two models shows a linear graph passing through the origin which confirmed a perfect regression model, where all the points lie on a diagonal line. Therefore, the relationship between MSE, MAE and RMSE for different models revealed that the optimized GPR has a better performance as compared to others. More so, visualizing the relationship between the output variable (rainfall) and each input variable reveals that some input variables (relative humidity, rainfall, pressure, wind speed and direction) have a strong correlation with the output variable (rainfall), with others having a noisy relationship which is not very clear.
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