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A novel water quality mechanism modeling and eutrophication risk assessment method of lakes and reservoirs

机译:湖泊和水库新型水质机制建模与富营养化风险评估方法

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摘要

Water quality mechanism modeling and eutrophication analysis are important technical means for water pollution prevention and control of lake and reservoirs. However, the existing classical water quality mechanism models usually contain unknown parameters with empirical values range, which brings difficulty of predicting water quality changes of specific lakes and reservoirs to meet the accuracy requirements. Furthermore, the most existing water quality prediction methods output single-valued predictions of water quality indicators. These prediction results possess contingencies and uncertainties. Eutrophication analysis based on these results will bring errors, even become completely wrong. Therefore, combining the evolution mechanism of water quality, this paper proposes a fruit fly optimization algorithm (FFOA)-based water quality mechanism modeling method and studies a eutrophication risk assessment method of lakes and reservoirs based on the mechanism model. First, combining observed water quality data, unknown parameters of a water quality mechanism model are estimated by using FFOA. Then, Monte Carlo simulation is employed to predict the evolution of water quality, and the probability distribution functions (PDFs) of water quality indicators at predicted time indexes are obtained to achieve water quality prediction. Finally, to quantitatively assess the eutrophication status, a comprehensive eutrophication status index (CESI) is constructed. The PDF of CESI and the probabilities of being in different eutrophication levels are calculated to achieve water eutrophication risk assessment. The simulation results show that the proposed method can effectively estimate the unknown parameters of the water quality mechanism model, predict water quality evolution and assess the eutrophication risk with better accuracy and rationality by comparing the existing methods.
机译:水质机制建模和富营养化分析是水污染防治和湖泊和水库的重要技术手段。然而,现有的经典水质机制模型通常包含具有经验值范围的未知参数,这使得预测特定湖泊和储层的水质变化难以满足精度要求。此外,最现有的水质预测方法输出单值的水质指标预测。这些预测结果具有突发事件和不确定性。基于这些结果的富营养化分析将带来错误,甚至变得完全错误。因此,结合水质的进化机制,本文提出了一种基于机制模型的果蝇优化算法(基于FFOA)的水质机制建模方法,研究了湖泊和水库的富营养化风险评估方法。首先,通过使用FFOA估算观察到的水质数据,采用水质机制模型的未知参数。然后,使用蒙特卡罗模拟来预测水质的演变,并且获得预测时间指标处的水质指示器的概率分布功能(PDF)以实现水质预测。最后,为了定量评估富营养化状态,构建了综合富营养化状态指数(CESI)。计算CESI的PDF和在不同富营养化水平中的概率,以实现水富营养化风险评估。仿真结果表明,该方法可以有效地估计水质机制模型的未知参数,预测水质进化,并通过比较现有方法来评估更好的准确性和合理性的富营养化风险。

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