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Fuzzy, ANN, and regression models to predict longitudinal dispersion coefficient in natural streams

机译:模糊,人工神经网络和回归模型可预测自然流中的纵向弥散系数

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This study developed fuzzy, ANN, and regression-based models to predict longitudinal dispersion coefficient in natural streams from flow discharge data. 92 sets of field data were employed to calibrate and validate the models. 63 sets of data were used for the calibration while the remaining data were used for the validation of the models. The model-prediction results revealed the superiority of the developed models over the existing equations. The developed models predicted the measured data satisfactorily with minimum errors and maximum accuracy rates. The three models had comparable performances although the fuzzy model had the highest accuracy rate (79%) and lowest mean relative error (0.85).
机译:这项研究开发了基于模糊,ANN和回归的模型,以根据流量数据预测自然流中的纵向弥散系数。使用92组现场数据来校准和验证模型。 63套数据用于校准,其余数据用于模型验证。模型预测结果表明,开发的模型优于现有方程。开发的模型以最小的误差和最大的准确率令人满意地预测了测量数据。尽管模糊模型具有最高的准确率(79%)和最低的平均相对误差(0.85),但三个模型的性能相当。

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