Prediction of Organic Pollution of Waters from the Déganobo Lake System: A Modeling Study

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Abstract

This work aimed to study the modeling of the organic pollution of the waters of the Déganobo Lake system by three models: Multiple Linear Regression model (MLR model), Mutilayer Perceptron model (MLP model) and Multiple Linear Regression/ Mutilayer Perceptron hybrid model (MLR/MLP hybrid model). In its implementation, the chemical oxygen demand (COD) of these waters, obtained from August 2021 to July 2022, was used. Two approaches were done in the case of the modeling of their COD by the MLP model and the MLR/MLP hybrid model: static modeling and dynamic modeling. The results have highlighted the low predictions of the COD of these waters by the MLR model (36.2 %) and the MLP models (6-8-1 for the static modeling and 7-3-1 for the dynamic modeling, both predicting less than 35% of the experimental values with high error (RMSE upper than 1.30 and relative error upper than 0.750). However, the MLR/MLP hybrid models (MLR/6-3-1 for the static modeling and MLR/7-3-1 for the dynamic modeling) both well predicted the COD of these waters, around 99% with very low errors (RMSE less than 0.0001 and relative error less than 0.006 in both cases). So, the MLR/MLP hybrid model was the most efficient to predict the COD of these waters. The accuracy of this hybrid model for ecological modeling was again provided during this study.
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德加诺博湖水系有机污染预测:模型研究
这项工作旨在通过三种模型研究德加诺博湖水系的有机污染模型:多重线性回归模型(MLR 模型)、中层感知器模型(MLP 模型)和多重线性回归/中层感知器混合模型(MLR/MLP 混合模型)。在实施过程中,使用了 2021 年 8 月至 2022 年 7 月期间获得的这些水域的化学需氧量(COD)。在使用 MLP 模型和 MLR/MLP 混合模型对这些水域的化学需氧量进行建模时,采用了两种方法:静态建模和动态建模。结果表明,MLR 模型(36.2%)和 MLP 模型(静态模型为 6-8-1,动态模型为 7-3-1)对这些水域的化学需氧量预测较低,预测值均低于实验值的 35%,且误差较大(均方误差大于 1.30,相对误差大于 0.750)。然而,MLR/MLP 混合模型(MLR/6-3-1 用于静态建模,MLR/7-3-1 用于动态建模)都很好地预测了这些水域的化学需氧量,约为 99%,误差非常小(RMSE 均小于 0.0001,相对误差均小于 0.006)。因此,MLR/MLP 混合模型是预测这些水域化学需氧量的最有效方法。本研究再次证明了该混合模型在生态建模方面的准确性。
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