Title of article :
Application of artificial neural networks to assess pesticide
contamination in shallow groundwater
Author/Authors :
Goloka B. Sahoo، نويسنده , , Chittaranjan Ray، نويسنده , , b، نويسنده , , ?، نويسنده , , Edward Mehnert c، نويسنده , , Donald A. Keefer c، نويسنده ,
Issue Information :
هفته نامه با شماره پیاپی سال 2006
Abstract :
In this study, a feed-forward back-propagation neural network (BPNN) was developed and applied to predict pesticide
concentrations in groundwater monitoring wells. Pesticide concentration data are challenging to analyze because they tend to be
highly censored. Input data to the neural network included the categorical indices of depth to aquifer material, pesticide leaching
class, aquifer sensitivity to pesticide contamination, time (month) of sample collection, well depth, depth to water from land
surface, and additional travel distance in the saturated zone (i.e., distance from land surface to midpoint of well screen). The output
of the neural network was the total pesticide concentration detected in the well. The model prediction results produced good
agreements with observed data in terms of correlation coefficient (R=0.87) and pesticide detection efficiency (E=89%), as well as
good match between the observed and predicted “class” groups. The relative importance of input parameters to pesticide
occurrence in groundwater was examined in terms of R, E, mean error (ME), root mean square error (RMSE), and pesticide
occurrence “class” groups by eliminating some key input parameters to the model. Well depth and time of sample collection were
the most sensitive input parameters for predicting the pesticide contamination potential of a well. This infers that wells tapping
shallow aquifers are more vulnerable to pesticide contamination than those wells tapping deeper aquifers. Pesticide occurrences
during post-application months (June through October) were found to be 2.5 to 3 times higher than pesticide occurrences during
other months (November through April). The BPNN was used to rank the input parameters with highest potential to contaminate
groundwater, including two original and five ancillary parameters. The two original parameters are depth to aquifer material and
pesticide leaching class. When these two parameters were the only input parameters for the BPNN, they were not able to predict
contamination potential. However, when they were used with other parameters, the predictive performance efficiency of the BPNN
in terms of R, E, ME, RMSE, and pesticide occurrence “class” groups increased. Ancillary data include data collected during the
study such as well depth and time of sample collection. The BPNN indicated that the ancillary data had more predictive power than
the original data. The BPNN results will help researchers identify parameters to improve maps of aquifer sensitivity to pesticide
contamination.
Keywords :
Pesticide occurrence , artificial neural network , Aquifer sensitivity , Statewide monitoring network , Groundwater quality , Shallow wells
Journal title :
Science of the Total Environment
Journal title :
Science of the Total Environment