Full text: The 3rd ISPRS Workshop on Dynamic and Multi-Dimensional GIS & the 10th Annual Conference of CPGIS on Geoinformatics

ISPRS, Vol.34, Part 2W2, “Dynamic and Multi-Dimensional GIS”, Bangkok, May 23-25, 2001 
63 
U=iu i 
|V,.) 
(7) 
V = ^i 
IV. I 
(8) 
where «. represents contaminant i, and v . is for age group 
1 J 
j- 
A fuzzy subset of UxV, which is a binary fuzzy relation from U 
to V, can be characterized through the following membership 
function: 
R :(J xV —> [0,1] (9) 
Thus, we have fuzzy relation matrix: 
R = {r | i = l,2,3,4; j = 1,2,3,4,5) (10) 
V 
Fig. 2 relationship between contaminant intake and 
cancer possibility 
r ij <«y} 
r ij = (Xij ~ fly ) /(by - fly ){<3y <X<b i j) (11) 
r tJ = l{x > by } 
Thus we got the matrix format for equation (10). 
Since individual contaminant will have different overall impacts 
on human health, we can construct a weighting set on U as: 
where x-- is the membership function of different contaminant 
V 
intake to cancer risk for contaminant I versus different age 
group j, which is a function of contaminant concentration and 
age group. 
The membership function of fuzzy set A to input factor x, 
denoted as JU A (x){0 < fJ. A (x) < 1} , will be defined as a 
linear function (Figure 2). It requires two parameters (a- and 
by , which denoted as the lower and upper bounds of 
allowable exposure dose). The relevant standards for setting 
fly and by are considered and acquired from the orientation 
materials and established standards from USEPA and 
published statewide and local government standards. For 
example, USEPA t and California local environmental 
department respectively take 0.005mg/L and 0.001 mg/L as 
federal and local guidelines for Benzene concentration in the 
groundwater to assess the potential health carcinogenicity. 
And Maximum Contaminant Level Goals (MCLG) for benzene 
has been set at zero because USEPA believes this level of 
protection would not cause any of the health effects. 
For age group 5, referring to above-mentioned guidelines, the 
most conservative standard 0.0mg/L and most popular 
standard 0.005mg/L are used to estimate and by . Taking 
those two values as concentration inputs into the contaminant 
intake calculation equation, the according ingestion dose- 
based standards will be derived. Following the similar 
concentration standard acquirement methodology, the 
respective concentration standards and ingestion dose- based 
standards for the rest of three contaminants can be obtained. 
Instead of having a detailed distribution for explaining the 
uncertainties, we have the membership grade of x tj • (Intake 
Dose) to cancer risk calculate as following: 
4 
W={W1 ,W2,W3,W4) and =1 
1 
(W1=0.71, W2=0.11, W3=0.09, W4=0.09) 
(12) 
Therefore, the comprehensive possibility of cancer risk posed 
by different age group could be calculated through the 
synthesizing process of a weighting set W and fuzzy relation 
matrix R: 
W ° R <-> ß woR 
(13) 
here we define ° as a max-* composition, so the membership 
grade 
MwoR =X < 14 ) 
and the result 
B=(0.80183,0.8009,0.80048,0.724288,0.723402) 
Which could be explained as the possibility that Age1, Age2, 
Age3, Age4, Age5 could have when exposed to the sample 
contaminant concentration. Therefore, besides knowing only 
the membership function value of cancer risk for each 
contaminant for different age group, and integrated possibility 
of causing cancer risk by concerned contaminants for different 
group is also presented as well. 
2.3 Extended Health Risk Assessment Approach by 
Using Fuzzy Set Theory 
The limitation of conventional overall risk assessment 
calculation method, which was spreadly accepted, occurs in 
the procedure of final overall risk evaluation. Regardless of the 
physical and chemical characteristic differences or 
interrelationships for both carcinogens and non-carcinogens, 
the overall cancer risk or non-cancer risk measurement for 
exposure to multiple carcinogens and non-carcinogens is 
normally the risk summarization of individual contaminant to 
provide the final measurement of risk. 
We introduced the concept of constructing risk analysis by 
fuzzy set theory in the above measurement of the individual 
health risk assessment. However, it’s by the number term of
	        
Waiting...

Note to user

Dear user,

In response to current developments in the web technology used by the Goobi viewer, the software no longer supports your browser.

Please use one of the following browsers to display this page correctly.

Thank you.