PREDICTING CONDUCTIVITY AND ACIDITY FOR SMALL STREAMS USING NEURAL NETWORKS

Citation
D. Bastarache et al., PREDICTING CONDUCTIVITY AND ACIDITY FOR SMALL STREAMS USING NEURAL NETWORKS, Canadian journal of civil engineering, 24(6), 1997, pp. 1030-1039
Citations number
8
ISSN journal
03151468
Volume
24
Issue
6
Year of publication
1997
Pages
1030 - 1039
Database
ISI
SICI code
0315-1468(1997)24:6<1030:PCAAFS>2.0.ZU;2-F
Abstract
Acidity and conductivity are parameters which must be studied to assis t in the management and understanding of watercourses. Studies of thes e parameters can require continuous series of some length which can be difficult to obtain. For instance, data series may have gaps because of problems with data acquisition. These gaps, which can interfere wit h analysis, can be filled in with model-generated data. The purpose of this study is to model Moose Pit Brook and Pine Marten Brook pH and c onductivity with neural networks. These streams are in the region of K ejimkujik National Park in Nova Scotia, Canada. Daily flow values and the time of year were used as inputs for the networks. The coefficient s of determination for the networks chosen to predict the output varia bles varied from 0.802 to 0.976 for the training series and from 0.716 to 0.967 for the evaluation series.