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Comparison of neuron-based, kernel-based, tree-based and curve-based machine learning models for predicting daily reference evapotranspiration

机译:基于神经元,基于核,基于树和基于曲线的机器学习模型的比较,以预测每日参考蒸散量

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摘要

Accurately predicting reference evapotranspiration (ET0) with limited climatic data is crucial for irrigation scheduling design and agricultural water management. This study evaluated eight machine learning models in four categories, i.e. neuron-based (MLP, GRNN and ANFIS), kernel-based (SVM, KNEA), tree-based (M5Tree, XGBoost) and curve-based (MARS) models, for predicting daily ET0 with maximum/maximum temperature and precipitation data during 2001–2015 from 14 stations in various climatic regions of China, i.e., arid desert of northwest China (NWC), semi-arid steppe of Inner Mongolia (IM), Qinghai-Tibetan Plateau (QTP), (semi-)humid cold-temperate northeast China (NEC), semi-humid warm-temperate north China (NC), humid subtropical central China (CC) and humid tropical south China (SC). The results showed machine learning models using only temperature data obtained satisfactory daily ET0 estimates (on average R2 = 0.829, RMSE = 0.718 mm day−1, NRMSE = 0.250 and MAE = 0.508 mm day−1). The prediction accuracy was improved by 7.6% across China when information of precipitation was further considered, particularly in (sub)tropical humid regions (by 9.7% in CC and 12.4% in SC). The kernel-based SVM, KNEA and curve-based MARS models generally outperformed the others in terms of prediction accuracy, with the best performance by KNEA in NWC and IM, by SVM in QTP, CC and SC, and very similar performance by them in NEC and NC. SVM (1.9%), MLP (2.0%), MARS (2.6%) and KNEA (6.4%) showed relatively small average increases in RMSE during testing compared with training RMSE. SVM is highly recommended for predicting daily ET0 across China in light of best accuracy and stability, while KNEA and MARS are also promising powerful models.
机译:利用有限的气候数据准确预测参考蒸散量(ET0)对于灌溉计划设计和农业用水管理至关重要。这项研究评估了四个类别的八个机器学习模型,分别是基于神经元的模型(MLP,GRNN和ANFIS),基于核的模型(SVM,KNEA),基于树的模型(M5Tree,XGBoost)和基于曲线的模型(MARS)。利用中国各气候区的14个气象站,即中国西北干旱沙漠(NWC),内蒙古半干旱草原(IM),青海-西藏,用2001-2015年的最高/最高温度和降水数据预测每日ET0高原(QTP),东北半湿润(NEC),华北半湿润暖温带(NC),亚热带中部湿润(CC)和热带南部湿润(SC)。结果显示仅使用温度数据的机器学习模型就获得了令人满意的每日ET0估计值(平均R 2 = 0.829,RMSE = 0.718 mm天 -1 ,NRMSE = 0.250和MAE = 0.508 mm day -1 )。进一步考虑降水信息后,中国各地的预报准确率提高了7.6%,特别是在(亚)热带湿润地区(CC下降了9.7%,SC下降了12.4%)。基于内核的SVM,KNEA和基于曲线的MARS模型在预测准确性方面通常优于其他模型,其中KNEA在NWC和IM中表现最佳,在QTP,CC和SC中表现出SVM,而在NEC和NC。与训练RMSE相比,SVM(1.9%),MLP(2.0%),MARS(2.6%)和KNEA(6.4%)在测试过程中的RMSE平均增加相对较小。考虑到最佳的准确性和稳定性,强烈建议使用SVM预测中国的每日ET0,而KNEA和MARS也是有前途的强大模型。

著录项

  • 期刊名称 PLoS Clinical Trials
  • 作者

    Lifeng Wu; Junliang Fan;

  • 作者单位
  • 年(卷),期 2015(14),5
  • 年度 2015
  • 页码 e0217520
  • 总页数 27
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

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