Predictive Model of the ENSO Phenomenon Based on Regression Trees

Mendel Pub Date : 2023-06-30 DOI:10.13164/mendel.2023.1.007
Indalecio Mendoza Uribe
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Abstract

In this work, the supervised machine learning technique was applied to develop a predictive model of the phase of the El Niño-Southern Oscillation (ENSO) phenomenon. Regression trees were specifically used by means of the Scikit-Learn library of the Python programming language. Data from the period 1950-2022 were used as training and test. The performance of the predictive model was validated using three continuous type error measurement metrics: Mean Absolute Error, Maximum Error and Root Mean Square Root. The results indicate that with a greater number of training data the model improves its performance, with a tendency to decrease the error in forecasts. Which starts for the year 1953 with errors of 0.77, 1.41 and 0.75 for MAE, ME and RMSE respectively, ending for the year 2022 with errors of 0.28, 0.72 and 0.13 for the same metrics. It is concluded that, based on the results, the developed model is consistent and reliable for ENSO phase forecasts in a 12-month window.
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基于回归树的ENSO现象预测模型
在这项工作中,应用监督机器学习技术开发了El Niño-Southern振荡(ENSO)现象的相位预测模型。回归树是通过Python编程语言的Scikit-Learn库来具体使用的。从1950年到2022年的数据被用作训练和测试。使用三个连续型误差测量指标:平均绝对误差、最大误差和均方根平方根来验证预测模型的性能。结果表明,随着训练数据数量的增加,模型的性能有所提高,预测误差有减小的趋势。从1953年开始,MAE、ME和RMSE的误差分别为0.77、1.41和0.75,到2022年结束,相同指标的误差分别为0.28、0.72和0.13。结果表明,该模型对12个月窗口的ENSO期相预报具有一致性和可靠性。
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来源期刊
Mendel
Mendel Decision Sciences-Decision Sciences (miscellaneous)
CiteScore
2.20
自引率
0.00%
发文量
7
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