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Application of a Novel Grid-Based Method Using a Wavelet Artificial Neural Network System for Predicting Water Quality Profiles in Deep Lakes: Effects of High and Low Frequency Wavelet Decomposed Components

机译:使用小波人工神经网络系统在深湖区水质型材预测水质型材的应用:高低频小波分解组分的影响

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A method employing artificial neural networks (ANNs) coupled with stationary wavelet transforms (SWTs) was used to estimate water temperature profiles in Boulder Basin, Lake Mead, from May 2011 through December 2014. Surface temperature measurements and stepwise predictions with depth were used to estimate water temperatures through the entire water column. Comparing different modeling scenarios revealed that vertical mixing mode within the water column influenced whether high or low frequency SWT components generated the most accurate water temperature estimates. Rapid temporal and spatial variations in certain parts of the water column increased prediction errors. SWT decomposition revealed that numerical errors in estimated water temperature signals tended to accumulate in specific SWT sub-signals. Excluding those sub-signals from the system improved method performance. ANNs using specific decomposed parts of the input temperature data yielded the best performance, resulting in a coefficient of determination, R~2 > 0.96 and maximum relative error of 0.68%.
机译:采用与静止小波变换(SWTS)耦合的人工神经网络(ANN)的方法用于估算巨石盆地,2014年5月至12月湖米湖中的水温曲线。表面温度测量和深度的逐步预测用于估计通过整个水柱的水温。比较不同的建模情景显示水列内的垂直混合模式影响了高或低频SWT部件是否产生最准确的水温估计。水塔的某些部分的快速时间和空间变化增加了预测误差。 SWT分解显示估计水温信号中的数值误差倾向于在特定的SWT子信号中累积。从系统改进的方法性能中排除这些子信号。 ANNS使用输入温度数据的特定分解部分产生最佳性能,导致测定系数,R〜2> 0.96,最大相对误差为0.68%。

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