Non-parametric kernel density estimation of species sensitivity distributions in developing water quality criteria of metals

被引:0
|
作者
Ying Wang
Fengchang Wu
John P. Giesy
Chenglian Feng
Yuedan Liu
Ning Qin
Yujie Zhao
机构
[1] Beijing Normal University,College of Water Sciences
[2] Chinese Research Academy of Environmental Science,State Key Laboratory of Environmental Criteria and Risk Assessment
[3] University of Saskatchewan,Department of Veterinary Biomedical Science and Toxicology Centre
[4] The Ministry of Environment Protection of PRC,The Key Laboratory of Water and Air Pollution Control of Guangdong Province, South China Institute of Environmental Sciences
关键词
SSD; Metals; HC5; Probabilistic; Taxa; Hazard;
D O I
暂无
中图分类号
学科分类号
摘要
Due to use of different parametric models for establishing species sensitivity distributions (SSDs), comparison of water quality criteria (WQC) for metals of the same group or period in the periodic table is uncertain and results can be biased. To address this inadequacy, a new probabilistic model, based on non-parametric kernel density estimation was developed and optimal bandwidths and testing methods are proposed. Zinc (Zn), cadmium (Cd), and mercury (Hg) of group IIB of the periodic table are widespread in aquatic environments, mostly at small concentrations, but can exert detrimental effects on aquatic life and human health. With these metals as target compounds, the non-parametric kernel density estimation method and several conventional parametric density estimation methods were used to derive acute WQC of metals for protection of aquatic species in China that were compared and contrasted with WQC for other jurisdictions. HC5 values for protection of different types of species were derived for three metals by use of non-parametric kernel density estimation. The newly developed probabilistic model was superior to conventional parametric density estimations for constructing SSDs and for deriving WQC for these metals. HC5 values for the three metals were inversely proportional to atomic number, which means that the heavier atoms were more potent toxicants. The proposed method provides a novel alternative approach for developing SSDs that could have wide application prospects in deriving WQC and use in assessment of risks to ecosystems.
引用
收藏
页码:13980 / 13989
页数:9
相关论文
共 50 条
  • [31] Non-parametric Estimation of the Number of Zeros in Truncated Count Distributions
    Puig, Pedro
    Kokonendji, Celestin C.
    [J]. SCANDINAVIAN JOURNAL OF STATISTICS, 2018, 45 (02) : 347 - 365
  • [32] ON THE NON-PARAMETRIC ESTIMATION OF THE BIVARIATE EXTREME-VALUE DISTRIBUTIONS
    DEHEUVELS, P
    DEOLIVEIRA, JT
    [J]. STATISTICS & PROBABILITY LETTERS, 1989, 8 (04) : 315 - 323
  • [33] PARAMETRIC AND NON-PARAMETRIC DENSITY-ESTIMATION TO ACCOUNT FOR EXTREME EVENTS
    YAKOWITZ, S
    [J]. ADVANCES IN APPLIED PROBABILITY, 1988, 20 (01) : 13 - 13
  • [34] Density estimation using non-parametric and semi-parametric mixtures
    Wang, Yong
    Chee, Chew-Seng
    [J]. STATISTICAL MODELLING, 2012, 12 (01) : 67 - 92
  • [35] KNN non-parametric kernel density estimation method for motion foreground detection based on Gaussian filtering
    Yang, Xiaoqiang
    Feng, Tianju
    [J]. 2019 11TH INTERNATIONAL CONFERENCE ON INTELLIGENT HUMAN-MACHINE SYSTEMS AND CYBERNETICS (IHMSC 2019), VOL 2, 2019, : 93 - 96
  • [36] Optimization configuration of photovoltaic-storage system capacity based on non-parametric kernel density estimation
    Jiang, Xiaoliang
    Li, Wei
    Lü, Xiangyu
    Gao, Yubo
    Han, Xiaojuan
    Ji, Tianming
    [J]. Gaodianya Jishu/High Voltage Engineering, 2015, 41 (07): : 2225 - 2230
  • [37] Low Default Credit Scoring using Two-class Non-parametric Kernel Density Estimation
    Rademeyer, Estian
    van der Walt, Christiaan M.
    de Waal, Alta
    [J]. 2016 PATTERN RECOGNITION ASSOCIATION OF SOUTH AFRICA AND ROBOTICS AND MECHATRONICS INTERNATIONAL CONFERENCE (PRASA-ROBMECH), 2016,
  • [38] An Artificial Neural Network Classifier Design Based-on Variable Kernel and Non-Parametric Density Estimation
    Chee Siong Teh
    Chee Peng Lim
    [J]. Neural Processing Letters, 2008, 27 : 137 - 151
  • [39] Research of modeling method based on non-parametric kernel density estimation of probability of wind power fluctuations
    Yang, Nan
    Zhou, Zheng
    Chen, Daojun
    Wang, Xuan
    Li, Hongsheng
    Li, Suoya
    [J]. Taiyangneng Xuebao/Acta Energiae Solaris Sinica, 2019, 40 (07): : 2028 - 2035
  • [40] NON-PARAMETRIC ONLINE CHANGE-POINT DETECTION WITH KERNEL LMS BY RELATIVE DENSITY RATIO ESTIMATION
    Bouchikhi, Ikram
    Ferrari, Andre
    Richard, Cedric
    Bourrier, Anthony
    Bernot, Marc
    [J]. 2018 IEEE STATISTICAL SIGNAL PROCESSING WORKSHOP (SSP), 2018, : 538 - 542