TY - JOUR
T1 - Arima as a forecasting tool for water quality time series measured with UV-Vis spectrometers in a constructed wetland
AU - Hernández, Nathalie
AU - Camargo, Julio
AU - Moreno, Fredy
AU - Torres, Andrés
AU - Plazas-Nossa, Leonardo
PY - 2017/9/1
Y1 - 2017/9/1
N2 - The prediction of water quality plays a crucial role in discussions about urban drainage systems, given that the integrated management of this resource is required in order to meet human needs. The present paper uses Arima (Autoregressive Integrated Moving Average) to predict influent and effluent water quality in a constructed wetland, as well as its pollutant removal efficiency. The wetland is located on the campus of the Pontificia Universidad Javeriana in Bogotá, Colombia. Arima prediction values were based on time series obtained with UV-Vis spectrometry probes. These predictions were found to be adequate for the first 12 hours of the water quality time series for the three data sets analyzed: Influent, effluent, and efficiency. Overall, none of the data had prediction errors over 15%. In separate analyses of the relative predictive errors in influent and effluent values, they were found to be less significant for UV wavelengths than for the visible range (Vis). In addition, the variability in this type of error was less for the UV range than for the Vis range, which indicates that Arima is a suitable prediction method for analyzing pollutants that fall in the UV range.
AB - The prediction of water quality plays a crucial role in discussions about urban drainage systems, given that the integrated management of this resource is required in order to meet human needs. The present paper uses Arima (Autoregressive Integrated Moving Average) to predict influent and effluent water quality in a constructed wetland, as well as its pollutant removal efficiency. The wetland is located on the campus of the Pontificia Universidad Javeriana in Bogotá, Colombia. Arima prediction values were based on time series obtained with UV-Vis spectrometry probes. These predictions were found to be adequate for the first 12 hours of the water quality time series for the three data sets analyzed: Influent, effluent, and efficiency. Overall, none of the data had prediction errors over 15%. In separate analyses of the relative predictive errors in influent and effluent values, they were found to be less significant for UV wavelengths than for the visible range (Vis). In addition, the variability in this type of error was less for the UV range than for the Vis range, which indicates that Arima is a suitable prediction method for analyzing pollutants that fall in the UV range.
KW - Forecasting methods
KW - UVVis spectrometry
KW - time series analysis
KW - water quality
KW - wetland.
UR - http://www.scopus.com/inward/record.url?scp=85031685837&partnerID=8YFLogxK
U2 - 10.24850/j-tyca-2017-05-09
DO - 10.24850/j-tyca-2017-05-09
M3 - Article
AN - SCOPUS:85031685837
SN - 0187-8336
VL - 8
SP - 127
EP - 139
JO - Tecnologia y Ciencias del Agua
JF - Tecnologia y Ciencias del Agua
IS - 5
ER -