Hybrid approach for addressing uncertainty in risk assessments

被引:162
作者
Guyonnet, D
Bourgine, B
Dubois, D
Fargier, H
Côme, B
Chilès, JP
机构
[1] Bur Rech Geol & Minieres, F-45060 Orleans 2, France
[2] Univ Toulouse 3, F-31063 Toulouse, France
[3] ANTEA, F-45061 Orleans 2, France
关键词
risk analysis; uncertainty principles; fuzzy sets; pollutants; hybrid methods;
D O I
10.1061/(ASCE)0733-9372(2003)129:1(68)
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Parameter uncertainty is a major aspect of the model-based estimation of the risk of human exposure to pollutants. The Monte Carlo method, which applies probability theory to address model parameter uncertainty, relies on a statistical representation of available information. In recent years, other uncertainty theories have been proposed as alternative approaches to address model parameter uncertainty in situations where available information is insufficient to identify statistically representative probability distributions, due in particular to data scarcity. The simplest such theory is possibility theory, which uses so-called fuzzy numbers to represent model parameter uncertainty. In practice, it may occur that certain model parameters can be reasonably represented by probability distributions, because there are sufficient data available to substantiate such distributions by statistical analysis, while others are better represented by fuzzy numbers (due to data scarcity). The question then arises as to how these two modes of representation of model parameter uncertainty can be combined for the purpose of estimating the risk of exposure. This paper proposes an approach (termed a hybrid approach) which combines Monte Carlo random sampling of probability distribution functions with fuzzy calculus. The approach is applied to a real case of estimation of human exposure, via vegetable consumption, to cadmium present in the surficial soils of an industrial site located in the north of France. The application illustrates the potential of the proposed approach, which allows the uncertainty affecting model parameters to be represented in a way that is consistent with the information at hand. Also, because the hybrid approach takes advantage of the "rich" information provided by probability distributions, while retaining the conservative character of fuzzy calculus, it is believed to hold value in terms of a "reasonable" application of the precautionary principle.
引用
收藏
页码:68 / 78
页数:11
相关论文
共 41 条
[1]  
[Anonymous], 1988, POSSIBILITY THEORY A
[2]   1-DIMENSIONAL, 2-DIMENSIONAL AND 3-DIMENSIONAL MODELING OF WATER-MOVEMENT IN THE UNSATURATED SOIL MATRIX USING A FUZZY APPROACH [J].
BARDOSSY, A ;
BRONSTERT, A ;
MERZ, B .
ADVANCES IN WATER RESOURCES, 1995, 18 (04) :237-&
[3]  
BONANO E, 1990, SAND891821 NAT LAB
[4]  
CAZEMEIER D, 1999, THESIS NATL SCH AGRO
[5]  
CHANEY RL, 1999, CADMIUM SOILS PLANTS, P219
[6]   LONG-TERM SLUDGE APPLICATIONS ON CADMIUM AND ZINC ACCUMULATION IN SWISS-CHARD AND RADISH [J].
CHANG, AC ;
PAGE, AL ;
WARNEKE, JE .
JOURNAL OF ENVIRONMENTAL QUALITY, 1987, 16 (03) :217-221
[7]  
Chiles J.-P., 2009, Geostatistics: modeling spatial uncertainty, V497
[8]  
Cooke R., 1991, EXPERTS UNCERTAINTY
[9]  
Cullen A.C., 1999, Probabilistic Techniques in Expose Assessment: A Handbook for Dealing with Variability and Uncertainty in Models and Inputs
[10]   Supremum preserving upper probabilities [J].
de Cooman, G ;
Aeyels, D .
INFORMATION SCIENCES, 1999, 118 (1-4) :173-212