Department of Energy and Environment, Southeast University, Nanjing 210096, China.
School of Glasgow, University of Electronic Science and Technology, Chengdu 610054, China.
Int J Environ Res Public Health. 2019 May 19;16(10):1769. doi: 10.3390/ijerph16101769.
Evaluating the eutrophication level of lakes with a single method alone is challenging since uncertain, fuzzy, and complex processes exist in eutrophication evaluations. The parameters selected for assessing eutrophication include chlorophyII-a, chemical oxygen demand, total phosphorus, total nitrogen, and clarity. Firstly, to deal with the uncertainties and fuzziness of data, triangular fuzzy numbers (TFN) were applied to describe the fuzziness of parameters. Secondly, to assess the eutrophication grade of lakes comprehensively, an improved fuzzy matter element (FME) approach was incorporated with TFNs with weights determined by combination of entropy method and analytic hierarchy process (AHP). In addition, the Monte Carlo (MC) approach was applied to easily simulate the arithmetic operations of eutrophication evaluation. The hybrid model of TFN, FME, and MC method is termed as the TFN⁻MC⁻FME model, which can provide more valuable information for decision makers. The developed model was applied to assess the eutrophication levels of 24 typical lakes in China. The evaluation indicators were expressed by TFNs input into the FME model to evaluate eutrophication grade. The results of MC simulation supplied quantitative information of possible intervals, the corresponding probabilities, as well as the comprehensive eutrophication levels. The eutrophication grades obtained for most lakes were identical to the results of the other three methods, which proved the correctness of the model. The presented methodology can be employed to process the data uncertainties and fuzziness by stochastically simulating their distribution characteristics, and obtain a better understanding of eutrophication levels. Moreover, the proposed model can also describe the trend of eutrophication development in lakes, and provide more valuable information for lake management authorities.
单一方法评估湖泊富营养化水平具有挑战性,因为富营养化评估中存在不确定、模糊和复杂的过程。用于评估富营养化的参数包括叶绿素 a、化学需氧量、总磷、总氮和清晰度。首先,为了处理数据的不确定性和模糊性,采用三角模糊数(TFN)来描述参数的模糊性。其次,为了全面评估湖泊的富营养化程度,将改进的模糊物元(FME)方法与 TFN 相结合,并通过熵法和层次分析法(AHP)的组合确定权重。此外,应用蒙特卡罗(MC)方法可以方便地模拟富营养化评价的运算。TFN、FME 和 MC 方法的混合模型称为 TFN⁻MC⁻FME 模型,可为决策者提供更有价值的信息。该模型应用于评估中国 24 个典型湖泊的富营养化水平。评价指标用 TFN 表示,输入 FME 模型评价富营养化等级。MC 模拟的结果提供了可能区间的定量信息、相应的概率以及综合富营养化水平。大多数湖泊的富营养化等级与其他三种方法的结果一致,证明了模型的正确性。该方法可以通过随机模拟数据的分布特征来处理数据的不确定性和模糊性,更好地了解富营养化水平。此外,所提出的模型还可以描述湖泊富营养化发展的趋势,并为湖泊管理当局提供更有价值的信息。