Performance Evaluation of Machine Learning Models for Weather Forecasting

Iliyas Ibrahim Iliyas, Andra Umoru, A. E. Chahari, Mustapha Mallam Garba
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Abstract

Temperature is used to indicate variability and climate changes that indicate the process which is been carried out within the ecosystem and its services. The lack of knowledge about temperature affects human lives in terms of agriculture, transportation, mining, etc. temperature forecasting is used to predict atmospheric conditions based on parameters that caused the temperature to change. This study aims to explore the use of machine learning models for the prediction of temperature, evaluate the performance of these models, and use the model to predict temperature. In this study we explore the use of four different machine learning algorithms for forecasting weather temperature, the algorithms are: Ridge, Random Forest, Linear Regression, and Decision tree. We divided the dataset into training and testing sets, The models were tested on 1000 testing sets based on RMSE score with Decision Tree having the best score of 0.036, Random Forest: 0.208 while Logistic Regression and Ridge had the lowest score of 0.759 respectively.
天气预报机器学习模型的性能评价
温度被用来表示变率,而气候变化则表明在生态系统及其服务中所进行的过程。温度知识的缺乏在农业、交通、采矿等方面影响着人类的生活。温度预报是根据引起温度变化的参数来预测大气状况。本研究旨在探索使用机器学习模型进行温度预测,评估这些模型的性能,并使用该模型进行温度预测。在这项研究中,我们探索了四种不同的机器学习算法在预测天气温度方面的使用,这些算法是:Ridge、随机森林、线性回归和决策树。我们将数据集分为训练集和测试集,基于RMSE得分在1000个测试集上对模型进行测试,其中Decision Tree得分最高,为0.036,Random Forest得分为0.208,Logistic Regression和Ridge得分最低,分别为0.759。
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