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耦合 ANFIS 与蚁群算法(ACO)进行 1-、2- 和 3-天提前预测日流量,波兰案例研究。

Coupling ANFIS with ant colony optimization (ACO) algorithm for 1-, 2-, and 3-days ahead forecasting of daily streamflow, a case study in Poland.

机构信息

Department of Water Engineering, Faculty of Agriculture, Bu-Ali Sina University, Hamedan, Iran.

Department of Hydrology and Water Management, Institute of Physical Geography and Environmental Planning, Adam Mickiewicz University, Poznań, Poland.

出版信息

Environ Sci Pollut Res Int. 2023 Apr;30(19):56440-56463. doi: 10.1007/s11356-023-26239-3. Epub 2023 Mar 15.

Abstract

Finding an efficient and reliable streamflow forecasting model has always been an important challenge for managers and planners of freshwater resources. The current study, based on an adaptive neuro-fuzzy inference system (ANFIS) model, was designed to predict the Warta river (Poland) streamflow for 1 day, 2 days, and 3 days ahead for a data set from the period of 1993-2013. The ANFIS was additionally combined with the ant colony optimization (ACO) algorithm and employed as a meta-heuristic ANFIS-ACO model, which is a novelty in streamflow prediction studies. The investigations showed that on a daily scale, precipitation had a very weak and insignificant effect on the river's flow variation, so it was not considered as a predictor input. The predictor inputs were selected by the autocorrelation function from among the daily streamflow time lags for all stations. The predictions were evaluated with the actual streamflow data, using such criteria as root mean square error (RMSE), normalized RMSE (NRMSE), and R. According to the NRMSE values, which ranged between 0.016-0.006, 0.030-0.013, and 0.038-0.020 for the 1-day, 2-day, and 3-day lead times, respectively, all predictions were classified as excellent in terms of accuracy (prediction quality). The best RMSE value was 1.551 m/s and the highest R value was equal to 0.998, forecast for 1-day lead time. The combination of ANFIS with the ACO algorithm enabled to significantly improve streamflow prediction. The use of this coupling can averagely increase the prediction accuracies of ANFIS by 12.1%, 12.91%, and 13.66%, for 1-day, 2-day, and 3-day lead times, respectively. The current satisfactory results suggest that the employed hybrid approach could be successfully applied for daily streamflow prediction in other catchment areas.

摘要

寻找一种高效、可靠的流域流量预测模型一直是淡水水资源管理者和规划者面临的重要挑战。本研究基于自适应神经模糊推理系统(ANFIS)模型,旨在预测 1993-2013 年期间的瓦尔塔河(波兰)未来 1 天、2 天和 3 天的流量。该模型还与蚁群算法(ACO)相结合,作为一种启发式的 ANFIS-ACO 模型,这在流量预测研究中是一种新颖的方法。研究表明,在日尺度上,降水对河流流量变化的影响非常微弱且不显著,因此不作为预测输入。预测输入是通过自相关函数从所有站点的日流量时间滞后中选择的。预测结果使用实际流量数据进行评估,评估标准包括均方根误差(RMSE)、归一化 RMSE(NRMSE)和 R。根据 NRMSE 值,分别为 0.016-0.006、0.030-0.013 和 0.038-0.020,对于 1 天、2 天和 3 天的提前期,所有预测结果的精度(预测质量)都被归类为优秀。最佳 RMSE 值为 1.551 米/秒,最高 R 值等于 0.998,用于预测 1 天的提前期。ANFIS 与 ACO 算法的结合能够显著提高流域流量预测的准确性。这种耦合的使用平均可以使 ANFIS 的预测精度分别提高 12.1%、12.91%和 13.66%,用于 1 天、2 天和 3 天的提前期。目前令人满意的结果表明,所采用的混合方法可以成功应用于其他流域的日流量预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cf14/10121544/08734759e856/11356_2023_26239_Fig1_HTML.jpg

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