Araujo P, Astray G, Ferrerio-Lage J A, Mejuto J C, Rodriguez-Suarez J A, Soto B
External Geodynamics Area, Faculty of Science, University of Vigo, 32004, Ourense, Spain.
J Environ Monit. 2011 Jan;13(1):35-41. doi: 10.1039/c0em00478b. Epub 2010 Nov 19.
Artificial neural networks (ANNs) have proven to be a tool for characterizing, modeling and predicting many of the non-linear hydrological processes such as rainfall-runoff, groundwater evaluation or simulation of water quality. After proper training they are able to generate satisfactory predictive results for many of these processes. In this paper they have been used to predict 1 or 2 days ahead the average and maximum daily flow of a river in a small forest headwaters in northwestern Spain. The inputs used were the flow and climate data (precipitation, temperature, relative humidity, solar radiation and wind speed) as recorded in the basin between 2003 and 2008. Climatic data have been utilized in a disaggregated form by considering each one as an input variable in ANN(1), or in an aggregated form by its use in the calculation of evapotranspiration and using this as input variable in ANN(2). Both ANN(1) and ANN(2), after being trained with the data for the period 2003-2007, have provided a good fit between estimated and observed data, with R(2) values exceeding 0.95. Subsequently, its operation has been verified making use of the data for the year 2008. The correlation coefficients obtained between the data estimated by ANNs and those observed were in all cases superior to 0.85, confirming the capacity of ANNs as a model for predicting average and maximum daily flow 1 or 2 days in advance.
人工神经网络(ANNs)已被证明是一种用于表征、建模和预测许多非线性水文过程的工具,如降雨径流、地下水评估或水质模拟。经过适当训练后,它们能够为许多此类过程生成令人满意的预测结果。在本文中,它们被用于提前1或2天预测西班牙西北部一个小森林源头河流的日均流量和最大日流量。所用输入数据是2003年至2008年期间流域内记录的流量和气候数据(降水量、温度、相对湿度、太阳辐射和风速)。气候数据以分解形式使用,即将每个数据作为人工神经网络(1)中的一个输入变量,或以聚合形式使用,即在计算蒸散量时使用这些数据,并将其作为人工神经网络(2)中的输入变量。人工神经网络(1)和人工神经网络(2)在使用2003 - 2007年期间的数据进行训练后,估计数据与观测数据之间具有良好的拟合度,决定系数(R²)值超过0.95。随后,利用2008年的数据对其运行情况进行了验证。人工神经网络估计的数据与观测数据之间获得的相关系数在所有情况下均优于0.85,证实了人工神经网络作为提前1或2天预测日均流量和最大日流量模型的能力。