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Prediction of dissolved oxygen in River Calder by noise elimination time series using wavelet transform

机译:基于小波变换的消噪时间序列预测卡尔德河中的溶解氧。

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Prediction of dissolved oxygen (DO) plays an important role in water resources especially in surface waters such as rivers. The oxygen affects a vast number of other water indicators. In this study, the artificial neural network (ANN) and a hybrid wavelet-ANN (WANN) models were considered to predict thirty minutes dissolved oxygen in the River Calder at the Methley Bridge Station was located in the UK. For the proposed WANN model, the discrete wavelet transform (DWT) was linked to the ANN model for DO prediction. To achieve this aim, the original time series of thirty minutes DO and temperature (T) were decomposed in several sub-time series by DWT, and these new sub-series were imposed to the ANN model. The results were compared with single ANN model. The comparisons were done by some of the widely used relevant physical statistic indices. The Nash-Sutcliffe coefficient values were 0.998 and 0.740 for the WANN and ANN models, respectively. The model computed values of DO by the WANN model were in close agreement with respective measured values in the river water. Elimination noise by DWT model during pre-processing data is one of the abilities of the WANN model to better prediction. Since the results indicate closer approximation of the peak DO values by the WANN model, this model could be used for the simulation of cumulative DO data prediction in thirty minutes ahead.
机译:溶解氧(DO)的预测在水资源中,特别是在地表水(如河流)中起着重要作用。氧气会影响大量其他水指标。在这项研究中,人工神经网络(ANN)和混合小波-ANN(WANN)模型被认为可以预测位于英国梅斯利桥站的卡尔德河中的30分钟溶解氧。对于提出的WANN模型,将离散小波变换(DWT)链接到ANN模型以进行DO预测。为了实现此目标,DWT将原始的三十分钟DO和温度(T)的时间序列分解为几个子时间序列,并将这些新的子序列应用于ANN模型。将结果与单个ANN模型进行比较。通过一些广泛使用的相关物理统计指标进行比较。对于WANN和ANN模型,Nash-Sutcliffe系数值分别为0.998和0.740。通过WANN模型计算的DO值与河水中的各个测量值非常吻合。 DWT模型在预处理数据期间消除噪声是WANN模型更好地进行预测的能力之一。由于结果表明WANN模型更接近峰值DO值,因此该模型可用于模拟三十分钟后的累积DO数据预测。

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