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수질오염 감시체계 구축을 위한 수질 데이터의 통계적 예측 가능성 검토A Study on the Statistical Predictability of Drinking Water Qualities for Contamination Warning System

Other Titles
A Study on the Statistical Predictability of Drinking Water Qualities for Contamination Warning System
Authors
박노석이영주채선하윤석민
Issue Date
2015
Publisher
대한상하수도학회
Keywords
contamination warning system; outlier; high-pass filter; linear filter model; 수질오염 감시체계; 이상치; 고주파통과필터; 선형필터 모델
Citation
상하수도학회지, v.29, no.4, pp 469 - 479
Pages
11
Indexed
KCI
Journal Title
상하수도학회지
Volume
29
Number
4
Start Page
469
End Page
479
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/17980
ISSN
1225-7672
2287-822X
Abstract
This study have been conducted to analyze the feasibility of establishing Contamination Warning System(CWS) that is capable of monitoring early natural or intentional water quality accidents, and providing active and quick responses for domestic C_water supply system. In order to evaluate the water quality data set, pH, turbidity and free residual chlorine concentration data were collected and each statistical value(mean, variation, range) was calculated, then the seasonal variability of those were analyzed using the independent t-test. From the results of analyzing the distribution of outliers in the measurement data using a high-pass filter, it could be confirmed that a lot of lower outliers appeared due to data missing. In addition, linear filter model based on autoregressive model(AR(1) and AR(2)) was applied for the state estimation of each water quality data set. From the results of analyzing the variability of the autocorrelation coefficient structure according to the change of window size(6hours~48hours), at least the window size longer than 12hours should be necessary for estimating the state of water quality data satisfactorily.
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공과대학 > Department of Civil Engineering > Journal Articles

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Park, No Suk
공과대학 (토목공학과)
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