TY - JOUR
T1 - Water quality analysis in rivers with non-parametric probability distributions and fuzzy inference systems
T2 - Application to the Cauca River, Colombia
AU - Ocampo-Duque, William
AU - Osorio, Carolina
AU - Piamba, Christian
AU - Schuhmacher, Marta
AU - Domingo, José L.
N1 - Funding Information:
The authors thank the Agencia Española de Cooperación Internacional para el Desarrollo (AECID) for financial support (Projects D/026977/09 , and D/031370/10 ). We also thank the CVC Corporation for providing water quality monitoring data.
PY - 2013/2
Y1 - 2013/2
N2 - The integration of water quality monitoring variables is essential in environmental decision making. Nowadays, advanced techniques to manage subjectivity, imprecision, uncertainty, vagueness, and variability are required in such complex evaluation process. We here propose a probabilistic fuzzy hybrid model to assess river water quality. Fuzzy logic reasoning has been used to compute a water quality integrative index. By applying a Monte Carlo technique, based on non-parametric probability distributions, the randomness of model inputs was estimated. Annual histograms of nine water quality variables were built with monitoring data systematically collected in the Colombian Cauca River, and probability density estimations using the kernel smoothing method were applied to fit data. Several years were assessed, and river sectors upstream and downstream the city of Santiago de Cali, a big city with basic wastewater treatment and high industrial activity, were analyzed. The probabilistic fuzzy water quality index was able to explain the reduction in water quality, as the river receives a larger number of agriculture, domestic, and industrial effluents. The results of the hybrid model were compared to traditional water quality indexes. The main advantage of the proposed method is that it considers flexible boundaries between the linguistic qualifiers used to define the water status, being the belongingness of water quality to the diverse output fuzzy sets or classes provided with percentiles and histograms, which allows classify better the real water condition. The results of this study show that fuzzy inference systems integrated to stochastic non-parametric techniques may be used as complementary tools in water quality indexing methodologies.
AB - The integration of water quality monitoring variables is essential in environmental decision making. Nowadays, advanced techniques to manage subjectivity, imprecision, uncertainty, vagueness, and variability are required in such complex evaluation process. We here propose a probabilistic fuzzy hybrid model to assess river water quality. Fuzzy logic reasoning has been used to compute a water quality integrative index. By applying a Monte Carlo technique, based on non-parametric probability distributions, the randomness of model inputs was estimated. Annual histograms of nine water quality variables were built with monitoring data systematically collected in the Colombian Cauca River, and probability density estimations using the kernel smoothing method were applied to fit data. Several years were assessed, and river sectors upstream and downstream the city of Santiago de Cali, a big city with basic wastewater treatment and high industrial activity, were analyzed. The probabilistic fuzzy water quality index was able to explain the reduction in water quality, as the river receives a larger number of agriculture, domestic, and industrial effluents. The results of the hybrid model were compared to traditional water quality indexes. The main advantage of the proposed method is that it considers flexible boundaries between the linguistic qualifiers used to define the water status, being the belongingness of water quality to the diverse output fuzzy sets or classes provided with percentiles and histograms, which allows classify better the real water condition. The results of this study show that fuzzy inference systems integrated to stochastic non-parametric techniques may be used as complementary tools in water quality indexing methodologies.
KW - Cauca River (Colombia)
KW - Fuzzy inference systems
KW - Monte Carlo simulation
KW - Non-parametric density estimators
KW - Uncertainty
KW - Water quality
UR - http://www.scopus.com/inward/record.url?scp=84871490809&partnerID=8YFLogxK
U2 - 10.1016/j.envint.2012.11.007
DO - 10.1016/j.envint.2012.11.007
M3 - Article
C2 - 23266912
AN - SCOPUS:84871490809
SN - 0160-4120
VL - 52
SP - 17
EP - 28
JO - Environment International
JF - Environment International
ER -