Hydrological Uncertainty Processor (HUP) with Estimation of the Marginal Distribution by a Gaussian Mixture Model

被引:10
|
作者
Feng, Kuaile [1 ,2 ]
Zhou, Jianzhong [1 ,2 ]
Liu, Yi [1 ,2 ]
Lu, Chengwei [1 ,2 ]
He, Zhongzheng [1 ,2 ]
机构
[1] Huazhong Univ Sci & Technol, Sch Hydropower & Informat Engn, Wuhan 430074, Hubei, Peoples R China
[2] Hubei Key Lab Digital Valley Sci & Technol, Wuhan 430074, Hubei, Peoples R China
基金
国家重点研发计划; 中国国家自然科学基金;
关键词
Hydrological uncertainty processor; Hydrological uncertainty; Bayesian forecasting system; Gaussian mixture model; River discharge; CLASSIFICATION;
D O I
10.1007/s11269-019-02260-5
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Uncertainty assessments of hydrological prediction results can reflect additional hydrological information and reveal important hydrological characteristics of river basins, which is of great significance to disaster prevention and reduction. The hydrological uncertainty processor (HUP), which is a key part of the Bayesian forecasting system (BFS), has derived a variety of methods for hydrological uncertainty forecasting. The HUP allows for any form of marginal distributions of hydrological data and does not require a unified estimation structure for the marginal distribution function. The Gaussian mixture model (GMM) is a probability distribution estimation model that can approximate any probability distribution with arbitrary precision. In this paper, the GMM was used to estimate the marginal distribution of observed and modelled data, and this method is called HUP-GMM. The uncertainty of river discharge at the Yichang hydrological station on the main stem of the Yangtze River in China is predicted by the HUP-GMM. The Weibull and Gamma distributions, which are commonly used hydrological probability distributions, are compared to analyse the performance of the GMM. In June, when the measured flow h(3) is 13,850 m(3)/s and the GMM, Gamma and Weibull distributions are used, the prior probabilities are 1.63E-04, 1.05E-04 and 9.50E-05 and the posterior probabilities are 2.57E-04, 1.61E-04 and 1.38E-04, respectively. In September, when the measured flow h(3) is 35,400 m(3)/s and the GMM, Gamma and Weibull distributions are used, the prior probabilities are 5.98E-05, 2.21E-05 and 2.18E-05 and the posterior probabilities are 1.64E-04, 9.15E-05 and 8.43E-05, respectively. The results show that the performance of the uncertainty estimation of the prior and posterior probability distributions in the HUP-GMM has been improved.
引用
收藏
页码:2975 / 2990
页数:16
相关论文
共 50 条
  • [1] Hydrological Uncertainty Processor (HUP) with Estimation of the Marginal Distribution by a Gaussian Mixture Model
    Kuaile Feng
    Jianzhong Zhou
    Yi Liu
    Chengwei Lu
    Zhongzheng He
    [J]. Water Resources Management, 2019, 33 : 2975 - 2990
  • [2] Estimation of Leakage Distribution Utilizing Gaussian Mixture Model
    Kwon, Hyunjeong
    Kim, Young Hwan
    Kang, Seokhyeong
    [J]. 2018 INTERNATIONAL SOC DESIGN CONFERENCE (ISOCC), 2018, : 149 - 150
  • [3] An efficient mixture sampling model for gaussian estimation of distribution algorithm
    Dang, Qianlong
    Gao, Weifeng
    Gong, Maoguo
    [J]. Information Sciences, 2022, 608 : 1157 - 1182
  • [4] An efficient mixture sampling model for gaussian estimation of distribution algorithm
    Dang, Qianlong
    Gao, Weifeng
    Gong, Maoguo
    [J]. INFORMATION SCIENCES, 2022, 608 : 1157 - 1182
  • [5] Skew-normal distribution model for rainfall uncertainty estimation in a distributed hydrological model
    Salgado-Castillo, Felix
    Barrios, Miguel
    Velez Upegui, Jorge
    [J]. HYDROLOGICAL SCIENCES JOURNAL, 2023, 68 (04) : 542 - 551
  • [6] Mixture Gaussian process model with Gaussian mixture distribution for big data
    Guan, Yaonan
    He, Shaoying
    Ren, Shuangshuang
    Liu, Shuren
    Li, Dewei
    [J]. CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2024, 253
  • [7] HUP-BMA: An Integration of Hydrologic Uncertainty Processor and Bayesian Model Averaging for Streamflow Forecasting
    Darbandsari, Pedram
    Coulibaly, Paulin
    [J]. WATER RESOURCES RESEARCH, 2021, 57 (10)
  • [8] Estimation of Spatial Distribution Using the Gaussian Mixture Model with Multivariate Geoscience Data
    Kim, Ho-Rim
    Yu, Soonyoung
    Yun, Seong-Taek
    Kim, Kyoung-Ho
    Lee, Goon-Taek
    Lee, Jeong-Ho
    Heo, Chul-Ho
    Ryu, Dong-Woo
    [J]. ECONOMIC AND ENVIRONMENTAL GEOLOGY, 2022, 55 (04): : 353 - 366
  • [9] Gaussian Mixture Distribution Makes Data Uncertainty Learning Better
    Ai, Hao
    Liao, Qingmin
    Chen, Yiyun
    Qian, Jiang
    [J]. 2021 16TH IEEE INTERNATIONAL CONFERENCE ON AUTOMATIC FACE AND GESTURE RECOGNITION (FG 2021), 2021,
  • [10] BAYES ESTIMATION IN A MIXTURE INVERSE GAUSSIAN MODEL
    GUPTA, RC
    AKMAN, HO
    [J]. ANNALS OF THE INSTITUTE OF STATISTICAL MATHEMATICS, 1995, 47 (03) : 493 - 503