2019
DOI: 10.1175/jhm-d-19-0045.1
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Decisive Atmospheric Circulation Indices for July–August Precipitation in North China Based on Tree Models

Abstract: Numerous circulation indices have been applied in practical climate services focused on regional precipitation. It is beneficial to identify the most influential or decisive indices, but this is difficult with conventional correlation analyses because of the underlying nonlinear mechanisms for precipitation. This paper demonstrates a set of the most influential indices for July–August precipitation in North China, based on the recursive random forest (RRF) method. These decisive circulation indices include the… Show more

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Cited by 14 publications
(6 citation statements)
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“…In order to select circulation indexes that are as strongly correlated with monthly runoff as much as possible, the top 1% of r among circulation indexes that pass the 0.01 significance test is selected as model additional input factors. It can be found from Table 2 that L is mainly equal to 7 and 8, and the r of North African Subtropical High Ridge Position Indexes, Indian Subtropical High Ridge Position Indexes, and Western Pacific Subtropical High Ridge Position Indexes separately are the top three, which confirms previous studies about the effect of atmospheric circulation indexes on moisture transport in eastern China [52]. Additionally, considering that excessive input factors in the machine learning model will cause an overfitting phenomenon, the PCA method is used to reduce the input dimensions of the above circulation indexes.…”
Section: Determining Forecasting Factors and Model Parametersupporting
confidence: 86%
“…In order to select circulation indexes that are as strongly correlated with monthly runoff as much as possible, the top 1% of r among circulation indexes that pass the 0.01 significance test is selected as model additional input factors. It can be found from Table 2 that L is mainly equal to 7 and 8, and the r of North African Subtropical High Ridge Position Indexes, Indian Subtropical High Ridge Position Indexes, and Western Pacific Subtropical High Ridge Position Indexes separately are the top three, which confirms previous studies about the effect of atmospheric circulation indexes on moisture transport in eastern China [52]. Additionally, considering that excessive input factors in the machine learning model will cause an overfitting phenomenon, the PCA method is used to reduce the input dimensions of the above circulation indexes.…”
Section: Determining Forecasting Factors and Model Parametersupporting
confidence: 86%
“…In addition, as a widely used pixel‐based model, RF was compared in this study. The RF model is based on the decision tree method, and the details about the algorithm can be found in Text S4 in Supporting Information (Breiman, 2001; Prasad et al., 2006; Rhee et al., 2014; Tong et al., 2019).…”
Section: Methodsmentioning
confidence: 99%
“…Machine learning has been used for years as a black-box solution. In recent years, it has become a tool to help to explore underlying mechanisms for weather prediction and climate diagnosis (e.g., Gao et al, 2019;Ham et al, 2019;Tong et al, 2019;Wei et al, 2020). In addition, the data-driven advantages of machine learning also facilitate characterizing the impact of weather and climate change on human society, economies, etc., thus constructing impact assessment and auxiliary decision-making models for various users (McGovern et al, 2017).…”
Section: Views Beyond the Olympicsmentioning
confidence: 99%