Scholarly Articles

관망자료를 이용한 인공지능 기반의 누수 예측
Journals

한국정보통신학회

Author

홍성택,이호현

Publication Date

20220701

Water pipeline network in local and metropolitan area is buried underground, by which it is hard to know the degree
of pipe aging and leakage. In this study, assuming various sensor combinations installed in the water pipeline network, the optimal algorithm was derived by predicting the water flow rate and pressure through artificial intelligence algorithms such as linear regression and neuro fuzzy analysis to examine the possibility of detecting pipe leakage according to the data combination. In the case of leakage detection through water supply pressure prediction, Neuro fuzzy algorithm was superior to linear regression analysis. In case of leakage detection through water supply flow prediction, flow rate prediction using neuro fuzzy algorithm should be considered first. If flow meter for prediction don’t exists, linear regression algorithm should be considered instead for pressure estimation.