Inicio  /  Water  /  Vol: 6 Par: 9 (2014)  /  Artículo
ARTÍCULO
TITULO

A Web-Based Tool to Interpolate Nitrogen Loading Using a Genetic Algorithm

Youn Shik Park and Bernie A. Engel    

Resumen

Water quality data may not be collected at a high frequency, nor over the range of streamflow data. For instance, water quality data are often collected monthly, biweekly, or weekly, since collecting and analyzing water quality samples are costly compared to streamflow data. Regression models are often used to interpolate pollutant loads from measurements made intermittently. Web-based Load Interpolation Tool (LOADIN) was developed to provide user-friendly interfaces and to allow use of streamflow and water quality data from U.S. Geological Survey (USGS) via web access. LOADIN has a regression model assuming that instantaneous load is comprised of the pollutant load based on streamflow and the pollutant load variation within the period. The regression model has eight coefficients determined by a genetic algorithm with measured water quality data. LOADIN was applied to eleven water quality datasets from USGS gage stations located in Illinois, Indiana, Michigan, Minnesota, and Wisconsin states with drainage areas from 44 km2 to 1,847,170 km2. Measured loads were calculated by multiplying nitrogen data by streamflow data associated with measured nitrogen data. The estimated nitrogen loads and measured loads were evaluated using Nash-Sutcliffe Efficiency (NSE) and coefficient of determination (R2). NSE ranged from 0.45 to 0.91, and R2 ranged from 0.51 to 0.91 for nitrogen load estimation.

 Artículos similares

       
 
Andreja Jonoski, Tanvir Ahmed, Mohammad N. Almasri and Muath Abu-Saadah    
Groundwater is a crucial resource for water supply and irrigation in many parts of the world, especially in the Middle East. The Eocene aquifer, located in the northern part of the West Bank, Palestine, is threatened by unsustainable groundwater abstract... ver más
Revista: Water

 
Gopal Nath, Yawei Wang, Austin Coursey, Krishna K. Saha, Srikanth Prabhu and Saptarshi Sengupta    
Productivity losses caused by absenteeism at work cost U.S. employers billions of dollars each year. In addition, employers typically spend a considerable amount of time managing employees who perform poorly. By using predictive analytics and machine lea... ver más
Revista: Information

 
Joshua Randall, Nicole C. Inglis, Lindsey Smart and Jelena Vukomanovic    
Invasive species are an important and growing issue of concern for land managers, and the ability to collect and visualize species coverage data is vital to the management of invasive and native species. This is particularly true of spatial data, which p... ver más

 
Supattra Puttinaovarat and Paramate Horkaew    
Green space areas are one of the key factors in people?s livelihoods. Their number and size have a significant impact on both the environment and people?s quality of life, including their health. Accordingly, government agencies often rely on information... ver más

 
Min-Hsien Weng, Shaoqun Wu and Mark Dyer    
With the rapidly growing number of scientific publications, researchers face an increasing challenge of discovering the current research topics and methodologies in a scientific domain. This paper describes an unsupervised topic detection approach that u... ver más
Revista: Applied Sciences