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中国嘉陵江流域有限气象资料估算月参照蒸散量的经验和机器学习方法评价。

Evaluation of Empirical and Machine Learning Approaches for Estimating Monthly Reference Evapotranspiration with Limited Meteorological Data in the Jialing River Basin, China.

机构信息

Chongqing Jinfo Mountain Karst Ecosystem National Observation and Research Station, School of Geographical Sciences, Southwest University, Chongqing 400715, China.

Chongqing Engineering Research Center for Remote Sensing Big Data Application, School of Geographical Sciences, Southwest University, Chongqing 400715, China.

出版信息

Int J Environ Res Public Health. 2022 Oct 12;19(20):13127. doi: 10.3390/ijerph192013127.

Abstract

The accurate estimation of reference evapotranspiration () is crucial for water resource management and crop water requirements. This study aims to develop an efficient and accurate model to estimate the monthly in the Jialing River Basin, China. For this purpose, a relevance vector machine, complex extreme learning machine (C-ELM), extremely randomized trees, and four empirical equations were developed. Monthly climatic data including mean air temperature, solar radiation, relative humidity, and wind speed from 1964 to 2014 were used as inputs for modeling. A total comparison was made between all constructed models using four statistical indicators, i.e., the coefficient of determination (), Nash efficiency coefficient (), root mean square error () and mean absolute error (). The outcome of this study revealed that the Hargreaves equation ( = 0.982, = 0.957, = 7.047 mm month, = 5.946 mm month) had better performance than the other empirical equations. All machine learning models generally outperformed the studied empirical equations. The C-ELM model ( = 0.995, = 0.995, = 2.517 mm month, = 1.966 mm month) had the most accurate estimates among all generated models and can be recommended for monthly estimation in the Jialing River Basin, China.

摘要

准确估算参考蒸散量()对于水资源管理和作物需水量至关重要。本研究旨在开发一种高效准确的模型,以估算中国嘉陵江流域的月参考蒸散量。为此,开发了相关向量机、复杂极限学习机(C-ELM)、极端随机树和四个经验方程。使用 1964 年至 2014 年的月气候数据,包括平均气温、太阳辐射、相对湿度和风速作为建模输入。使用四个统计指标(决定系数()、纳什效率系数()、均方根误差()和平均绝对误差())对所有构建的模型进行了全面比较。研究结果表明,哈格里夫斯方程(=0.982,=0.957,=7.047 mm 月,=5.946 mm 月)的性能优于其他经验方程。所有机器学习模型的性能普遍优于所研究的经验方程。C-ELM 模型(=0.995,=0.995,=2.517 mm 月,=1.966 mm 月)在所有生成的模型中具有最准确的估计值,可推荐用于中国嘉陵江流域的月参考蒸散量估算。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6078/9602706/9231626d8452/ijerph-19-13127-g001.jpg

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