TY - JOUR
T1 - Potential use of ionic species for identifying source land-uses of stormwater runoff
AU - Lee, Dong Hoon
AU - Kim, Jin Hwi
AU - Mendoza, Joseph A.
AU - Lee, Chang Hee
AU - Kang, Joo Hyon
N1 - Publisher Copyright:
© IWA Publishing 2017.
PY - 2017/2
Y1 - 2017/2
N2 - Identifying critical land-uses or source areas is important to prioritize resources for cost-effective stormwater management. This study investigated the use of information on ionic composition as a fingerprint to identify the source land-use of stormwater runoff. We used 12 ionic species in stormwater runoff monitored for a total of 20 storm events at five sites with different land-use compositions during the 2012-2014 wet seasons. A stepwise forward discriminant function analysis (DFA) with the jack-knifed cross validation approach was used to select ionic species that better discriminate the land-use of its source. Of the 12 ionic species, 9 species (K+, Mg2+, Na+, NH4+, Br-, Cl-, F-, NO42-, and SO42-) were selected for better performance of the DFA. The DFA successfully differentiated stormwater samples from urban, rural, and construction sites using concentrations of the ionic species (70%, 95%, and 91% of correct classification, respectively). Over 80% of the new data cases were correctly classified by the trained DFA model. When applied to data cases from a mixed land-use catchment and downstream, the DFA model showed the greater impact of urban areas and rural areas respectively in the earlier and later parts of a storm event.
AB - Identifying critical land-uses or source areas is important to prioritize resources for cost-effective stormwater management. This study investigated the use of information on ionic composition as a fingerprint to identify the source land-use of stormwater runoff. We used 12 ionic species in stormwater runoff monitored for a total of 20 storm events at five sites with different land-use compositions during the 2012-2014 wet seasons. A stepwise forward discriminant function analysis (DFA) with the jack-knifed cross validation approach was used to select ionic species that better discriminate the land-use of its source. Of the 12 ionic species, 9 species (K+, Mg2+, Na+, NH4+, Br-, Cl-, F-, NO42-, and SO42-) were selected for better performance of the DFA. The DFA successfully differentiated stormwater samples from urban, rural, and construction sites using concentrations of the ionic species (70%, 95%, and 91% of correct classification, respectively). Over 80% of the new data cases were correctly classified by the trained DFA model. When applied to data cases from a mixed land-use catchment and downstream, the DFA model showed the greater impact of urban areas and rural areas respectively in the earlier and later parts of a storm event.
KW - Critical source area
KW - Discriminant function analysis
KW - Ions
KW - Land-use
KW - Stormwater
UR - http://www.scopus.com/inward/record.url?scp=85017200797&partnerID=8YFLogxK
U2 - 10.2166/wst.2016.575
DO - 10.2166/wst.2016.575
M3 - Article
C2 - 28234298
AN - SCOPUS:85017200797
SN - 0273-1223
VL - 75
SP - 978
EP - 986
JO - Water Science and Technology
JF - Water Science and Technology
IS - 4
ER -