Department of Engineering Science, Universiti Malaysia Terengganu, Kuala Terengganu, Malaysia.
Department of Civil and Structural Engineering, Universiti Kebangsaan Malaysia, Bangi, Malaysia.
Environ Sci Pollut Res Int. 2014 Feb;21(3):1658-1670. doi: 10.1007/s11356-013-2048-4. Epub 2013 Aug 16.
We discuss the accuracy and performance of the adaptive neuro-fuzzy inference system (ANFIS) in training and prediction of dissolved oxygen (DO) concentrations. The model was used to analyze historical data generated through continuous monitoring of water quality parameters at several stations on the Johor River to predict DO concentrations. Four water quality parameters were selected for ANFIS modeling, including temperature, pH, nitrate (NO3) concentration, and ammoniacal nitrogen concentration (NH3-NL). Sensitivity analysis was performed to evaluate the effects of the input parameters. The inputs with the greatest effect were those related to oxygen content (NO3) or oxygen demand (NH3-NL). Temperature was the parameter with the least effect, whereas pH provided the lowest contribution to the proposed model. To evaluate the performance of the model, three statistical indices were used: the coefficient of determination (R (2)), the mean absolute prediction error, and the correlation coefficient. The performance of the ANFIS model was compared with an artificial neural network model. The ANFIS model was capable of providing greater accuracy, particularly in the case of extreme events.
我们讨论了自适应神经模糊推理系统 (ANFIS) 在训练和预测溶解氧 (DO) 浓度方面的准确性和性能。该模型用于分析通过在柔佛河几个站点对水质参数进行连续监测生成的历史数据,以预测 DO 浓度。选择了四个水质参数进行 ANFIS 建模,包括温度、pH 值、硝酸盐 (NO3) 浓度和氨氮浓度 (NH3-NL)。进行了敏感性分析以评估输入参数的影响。影响最大的输入是与氧气含量 (NO3) 或氧气需求 (NH3-NL) 相关的输入。温度是影响最小的参数,而 pH 值对所提出的模型的贡献最低。为了评估模型的性能,使用了三个统计指标:确定系数 (R (2))、平均绝对预测误差和相关系数。将 ANFIS 模型的性能与人工神经网络模型进行了比较。ANFIS 模型能够提供更高的准确性,特别是在极端事件的情况下。