TY - JOUR
T1 - Identification of key local factors influencing revenue water ratio of Korean cities using principal component analysis and clustering analysis
AU - Chung, S.
AU - Lee, H.
AU - Yu, M.
AU - Koo, J.
AU - Hyun, I.
AU - Lee, H.
PY - 2005
Y1 - 2005
N2 - In order to identify the relation between revenue water (RW) ratio and key local factors in a quantifiable way, 90 effect factors were considered as regional characteristics for 79 Korean cities. Seven statistically significant effect factors were chosen through correlation analysis. Three principal components independently influencing RW ratio were extracted by principal component analysis (PCA). The 79 cities were grouped into six clusters by k-means clustering (KMC) of the factor scores of the cities. Then key local factors were identified and their impacts were quantified by multiple regression analysis (MRA) and they were justified by T-test and F-test. The approach through correlation-PCA-KMC-MRA was proved to be one of scientific ways for identification of key local factors. According to the result, it was suggested that a shorter length of distribution system, a water supply with smaller number of bigger customer meters a and gravitational supply through reservoir would be advantageous from a RW ratio's point of view.
AB - In order to identify the relation between revenue water (RW) ratio and key local factors in a quantifiable way, 90 effect factors were considered as regional characteristics for 79 Korean cities. Seven statistically significant effect factors were chosen through correlation analysis. Three principal components independently influencing RW ratio were extracted by principal component analysis (PCA). The 79 cities were grouped into six clusters by k-means clustering (KMC) of the factor scores of the cities. Then key local factors were identified and their impacts were quantified by multiple regression analysis (MRA) and they were justified by T-test and F-test. The approach through correlation-PCA-KMC-MRA was proved to be one of scientific ways for identification of key local factors. According to the result, it was suggested that a shorter length of distribution system, a water supply with smaller number of bigger customer meters a and gravitational supply through reservoir would be advantageous from a RW ratio's point of view.
KW - Key local factors
KW - Multiple regression analysis (MRA)
KW - Principal component analysis (PCA)
KW - Revenue water
KW - Water loss management
KW - k-means clustering (KMC)
UR - http://www.scopus.com/inward/record.url?scp=29144456678&partnerID=8YFLogxK
U2 - 10.2166/ws.2005.0100
DO - 10.2166/ws.2005.0100
M3 - Article
AN - SCOPUS:29144456678
SN - 1606-9749
VL - 5
SP - 197
EP - 208
JO - Water Science and Technology: Water Supply
JF - Water Science and Technology: Water Supply
IS - 3-4
ER -