Development of Fuzzy Method for Judging Lake Eutrophication Grades

퍼지이론을 이용한 호소의 부영양화등급 판정방법 개발

  • Lee, Yong-Woon (Dept. of Civil and Environmental Engineering, Chonnam National University) ;
  • Gwon, Yong-Woon (Safety & Environment Team, Poong-Lim Industrial Co., Ltd.)
  • 이용운 (전남대학교 건설지구환경공학부) ;
  • 권병택 (풍립산업(주) 안전환경팀)
  • Received : 2005.10.04
  • Accepted : 2006.01.05
  • Published : 2006.02.28

Abstract

The eutrophication in lakes is caused by the inflow of excessive nitrogen and phosphorus, which are not only pollutants to reduce the value of water resource but also nutrients for algae growth that debases water quality. Several methods have been used to judge the eutrophication grades of lakes, but the judgment results can be different with one another even under same coditions because each method is different in judgment items and their standards. A method for overcoming the problem with the judgment of eutrophication grades is, therefore, developed in this study with the application of fuzzy theory. This method allows decision makers to represent the uncertainties (differences) of results by the existing judgment methods and also incorporate associated uncertainties directly into the judgment process, so the judgment results can be made that are more realistic and consistent than those made without taking uncertainty in account.

Keywords

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