A Posteriori Random Forests for Stochastic Downscaling of Precipitation by Predicting Probability Distributions

被引:21
作者
Legasa, M. N. [1 ]
Manzanas, R. [1 ]
Calvino, A. [2 ]
Gutierrez, J. M. [3 ]
机构
[1] Univ Cantabria, Dept Matemat Aplicada & Ciencias Computac, Meteorol Grp, Santander, Spain
[2] Univ Complutense Madrid, Dept Stat & Data Sci, Madrid, Spain
[3] Univ Cantabria, Inst Fis Cantabria IFCA, CSIC, Meteorol Grp, Santander, Spain
关键词
precipitation; random forest; machine learning; statistical downscaling; probabilistic prediction; stochastic time-series; CLIMATE-CHANGE; GAMMA-DISTRIBUTION; MODEL; FRAMEWORK; RAINFALL; PREDICTABILITY; CONFIGURATION; PROJECTIONS; ESTIMATORS; GENERATORS;
D O I
10.1029/2021WR030272
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
This work presents a comprehensive assessment of the suitability of random forests, a well-known machine learning technique, for the statistical downscaling of precipitation. Building on the experimental and validation framework proposed in the Experiment 1 of the COST action VALUE-the largest, most exhaustive intercomparison study of statistical downscaling methods to date-we introduce and thoroughly analyze a posteriori random forests (AP-RFs), which use all the information contained in the leaves to reliably predict the shape and scale parameters of the gamma probability distribution of precipitation on wet days. Therefore, as opposed to traditional random forests, which typically provide deterministic predictions, our AP-RFs allow realistic stochastic precipitation samples to be generated for wet days. Indeed, as compared to one particular implementation of a generalized linear model that exhibited an overall good performance in VALUE, our AP-RFs yield better distributional similarity with observations without loss of predictive power. Noteworthy, the new methodology proposed in this paper has substantial potential for hydrologists and other impact communities which are in need of local-scale, reliable stochastic climate information.
引用
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页数:17
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共 68 条
  • [61] WILKS DS, 1992, J CLIMATE, V5, P252, DOI 10.1175/1520-0442(1992)005<0252:EMASPD>2.0.CO
  • [62] 2
  • [63] The Application of a Decision Tree and Stochastic Forest Model in Summer Precipitation Prediction in Chongqing
    Xiang, Bo
    Zeng, Chunfen
    Dong, Xinning
    Wang, Jiayue
    [J]. ATMOSPHERE, 2020, 11 (05)
  • [64] Downscaling and Projection of Multi-CMIP5 Precipitation Using Machine Learning Methods in the Upper Han River Basin
    Xu, Ren
    Chen, Nengcheng
    Chen, Yumin
    Chen, Zeqiang
    [J]. ADVANCES IN METEOROLOGY, 2020, 2020
  • [65] Closed-Form Estimators for the Gamma Distribution Derived From Likelihood Equations
    Ye, Zhi-Sheng
    Chen, Nan
    [J]. AMERICAN STATISTICIAN, 2017, 71 (02) : 177 - 181
  • [66] Predicting individual tree attributes from airborne laser point clouds based on the random forests technique
    Yu, Xiaowei
    Hyyppa, Juha
    Vastaranta, Mikko
    Holopainen, Markus
    Viitala, Risto
    [J]. ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2011, 66 (01) : 28 - 37
  • [67] Zorita E, 1999, J CLIMATE, V12, P2474, DOI 10.1175/1520-0442(1999)012<2474:TAMAAS>2.0.CO
  • [68] 2