Conditional bias-penalized kriging (CBPK)

被引:25
|
作者
Seo, Dong-Jun [1 ]
机构
[1] Univ Texas Arlington, Dept Civil Engn, Arlington, TX 76019 USA
关键词
Conditional bias; Kriging; Precipitation; estimation; Rain gauges; FRACTIONAL COVERAGE; RAINFALL FIELDS; PRECIPITATION; SYSTEM;
D O I
10.1007/s00477-012-0567-z
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Simple and ordinary kriging, or SK and OK, respectively, represent the best linear unbiased estimator in the unconditional sense in that they minimize the unconditional (on the unknown truth) error variance and are unbiased in the unconditional mean. However, because the above properties hold only in the unconditional sense, kriging estimates are generally subject to conditional biases that, depending on the application, may be unacceptably large. For example, when used for precipitation estimation using rain gauge data, kriging tends to significantly underestimate large precipitation and, albeit less consequentially, overestimate small precipitation. In this work, we describe an extremely simple extension to SK or OK, referred to herein as conditional bias-penalized kriging (CBPK), which minimizes conditional bias in addition to unconditional error variance. For comparative evaluation of CBPK, we carried out numerical experiments in which normal and lognormal random fields of varying spatial correlation scale and rain gauge network density are synthetically generated, and the kriging estimates are cross-validated. For generalization and potential application in other optimal estimation techniques, we also derive CBPK in the framework of classical optimal linear estimation theory.
引用
收藏
页码:43 / 58
页数:16
相关论文
共 42 条
  • [21] Analysis of computer experiments using penalized likelihood in Gaussian kriging models
    Li, RZ
    Sudjianto, A
    TECHNOMETRICS, 2005, 47 (02) : 111 - 120
  • [22] Recursive estimators of mean-areal and local bias in precipitation products that account for conditional bias
    Zhang, Yu
    Seo, Dong-Jun
    ADVANCES IN WATER RESOURCES, 2017, 101 : 49 - 59
  • [23] Conditional non-bias of geostatistical simulation for estimation of recoverable reserves
    McLennan, JA
    Deutsch, CV
    CIM BULLETIN, 2004, 97 (1080): : 68 - 72
  • [24] Influence diagnostic in survey sampling:: Conditional bias
    Moreno-Rebollo, JL
    Muñoz-Reyes, A
    Muñoz-Pichardo, J
    BIOMETRIKA, 1999, 86 (04) : 923 - 928
  • [25] Bias Correction of Ocean Bottom Temperature and Salinity Simulations From a Regional Circulation Model Using Regression Kriging
    Chang, Jui-Han
    Hart, Deborah R.
    Munroe, Daphne M.
    Curchitser, Enrique N.
    JOURNAL OF GEOPHYSICAL RESEARCH-OCEANS, 2021, 126 (04)
  • [26] Influence diagnostic in survey sampling:: Estimating the conditional bias
    Moreno-Rebollo, JL
    Muñoz-Reyes, A
    Jiménez-Gamero, MD
    Muñoz-Pichardo, J
    METRIKA, 2002, 55 (03) : 209 - 214
  • [27] Geology - Smoothing effect, conditional bias and recoverable reserves
    Pan, GC
    CIM BULLETIN, 1998, 91 (1019): : 81 - 86
  • [28] OPTIMAL COMPROMISE BETWEEN INCOMPATIBLE CONDITIONAL PROBABILITY DISTRIBUTIONS, WITH APPLICATION TO OBJECTIVE BAYESIAN KRIGING
    Mure, Joseph
    ESAIM-PROBABILITY AND STATISTICS, 2019, 23 : 271 - 309
  • [29] Influence diagnostics in regression with complex designs through conditional bias
    Jiménez-Gamero, MD
    Moreno-Rebollo, JL
    Muñoz-Pichardo, JM
    Muñoz-Reyes, AM
    TEST, 2005, 14 (02) : 515 - 542
  • [30] Geometric Analysis of Conditional Bias-Informed Kalman Filters
    Lee, Haksu
    Shen, Haojing
    Seo, Dong-Jun
    HYDROLOGY, 2022, 9 (05)