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A data-driven multi-model ensemble for deterministic and probabilistic precipitation forecasting at seasonal scale

机译:一种数据驱动的多模型集合,用于季节规模的确定性和概率降水预测

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摘要

Seasonal precipitation forecasting is valuable for regional water management and agricultural food security. Current numerical models have large uncertainty in model structure, parameterization and initial conditions. Here, a data-driven multi-model ensemble is constructed using a series of statistical and machine learning methods with varying inputs. Deterministic precipitation forecasts are produced by the weighting of ensemble members using Bayesian model averaging (BMA) and probabilistic forecasts are generated by sampling from BMA predictive probability density function (PDF). Three mathematical metrics are used to evaluate the performance of precipitation forecasts, including Pearson's correlation coefficient (PCC), root mean square error skill score (RMSESS) and continuous ranked probability skill score (CRPSS). The results demonstrate that the accuracy in the statistical ensemble is significantly higher than the North American multi-model ensemble (NMME) for both deterministic and probabilistic precipitation forecasts, especially at 1-month lead. Statistical models are considerably enhanced by incorporating wavelets, which decomposes the raw precipitation series into several different levels, potentially representing underlying precipitation patterns at different time-frequency scales. Selecting some good ensemble members can improve the ensemble performance, instead of including all the ensemble members with some inefficient models. Overall, the statistical ensemble can be considered as an effective complement of numerical models in both deterministic and probabilistic precipitation forecasts.
机译:季节性降水预测对于区域水管理和农业粮食安全是有价值的。当前数值模型在模型结构,参数化和初始条件下具有大的不确定性。这里,使用具有不同输入的一系列统计和机器学习方法构建数据驱动的多模型集合。确定性沉淀预测由使用贝叶斯模型平均(BMA)的集合构件的加权产生,并且通过从BMA预测概率密度函数(PDF)的采样来产生概率预测。三个数学指标用于评估降水预测的性能,包括Pearson的相关系数(PCC),根均方误差技能得分(RMSESS)和连续排名概率技能得分(CRPS)。结果表明,统计集合中的准确性明显高于北美多模型集合(NMME),用于确定性和概率降水预测,特别是在1个月的铅。通过将原始沉淀系列分解成几种不同的水平,通过将原始沉淀系列分解为几种不同的水平,统计模型显着提高,可能代表不同的时频尺度的底层降水模式。选择一些好的合奏会员可以提高集合性能,而不是包含具有一些效率效率的所有集合成员。总的来说,统计集合可以被认为是确定性和概率降水预测中数值模型的有效补充。

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  • 来源
    《Climate dynamics》 |2020年第8期|3355-3374|共20页
  • 作者单位

    Wuhan Univ State Key Lab Informat Engn Surveying Mapping & R Wuhan 430079 Peoples R China;

    Wuhan Univ State Key Lab Informat Engn Surveying Mapping & R Wuhan 430079 Peoples R China|Collaborat Innovat Ctr Geospatial Technol Wuhan 430079 Peoples R China;

    Wuhan Univ State Key Lab Informat Engn Surveying Mapping & R Wuhan 430079 Peoples R China;

    Wuhan Univ State Key Lab Informat Engn Surveying Mapping & R Wuhan 430079 Peoples R China;

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  • 正文语种 eng
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