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首页> 外文期刊>Journal of Hydrology >Novel forecasting models for immediate-short-term to long-term influent flow prediction by combining ANFIS and grey wolf optimization
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Novel forecasting models for immediate-short-term to long-term influent flow prediction by combining ANFIS and grey wolf optimization

机译:通过组合ANFIS和灰狼优化的立即短期对长期影响流动预测的新预测模型

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摘要

Accurate influent flow forecasting plays a significant role in management, operation, scheduling and utilization of the sewage treatment plants. In design and operate such plants, it is essential to measure and forecast the influent flow rate in wastewater plants. In this paper, the Very immediate-short-term to long-term influent flow rate are modeled and forecasted by a new developed hybrid model of ANFIS and Grey Wolf Optimizer (GWO). The objective of this study is the integration of GWO with ANFIS in forecasting multi-ahead influent flow rate. The forecast horizon of the model is from 5 min up to 10 days bases on Gamma Test (GT) feature selection of input combinations. As the parameters of ANFIS have effect on the forecasting accuracy, these parameters are adjusted and optimized by using Grey Wolf Optimizer (GWO). Then the choice of appropriate input parameters at different prediction horizons from Very immediate-short-term (5-min ahead) to long-term (10 days ahead) was discussed for influent forecasting. The statistical indices of RMSE, NSE, MAE, RAE, R-2, d, CI and graphical evaluations such as scatter-plots with confidence bounds, error distributions, Taylor diagrams, box-plots and empirical cumulative distribution function (ECDF) were implemented for assessing the performance of all models in prediction horizons. Furthermore as another novelty in the present paper, recursive forecasting models based on previous forecasted values is used to improve the accuracy and applicability of ANFIS-GWO in recursive predictions. Our Results showed that: (1) the hybrid of ANFIS-GWO significantly improved the prediction accuracy. (2) ANFIS-GWO performs more efficiently than the ANFIS in almost all of the prediction horizons (ANFIS-GWO1: 5 min ahead; ANFIS-GWO11: 1-2 days ahead; ANFIS-GWO8: one week ahead). (3) The performance of models in influent flow forecasting is significantly influenced by the prediction horizon. The computational results confirmed that the ANFIS-GWO p
机译:精确的进水流量预测在污水处理厂的管理,运营,调度和利用中起着重要作用。在设计和操作这些植物中,必须测量和预测废水植物中的流动流速。在本文中,通过新的ANFIS和灰狼优化器(GWO)的新开发的混合模型进行了模拟和预测的即时短期到长期影响。本研究的目的是GWO与ANFIS的整合在预测多前进的影响流量流速。该模型的预测地平线为5分钟,最多10天基于伽玛检测(GT)特征选择的输入组合。随着ANFI的参数对预测精度产生影响,通过使用灰狼优化器(GWO)来调整和优化这些参数。然后讨论了从非常直接短期(5分钟)到长期(未来10天)的不同预测视野的适当输入参数的选择进行了影响的预测。实施了RMSE,NSE,MAE,RAE,R-2,D,CI和图形评估的统计指标,例如具有置信度的散射图,错误分布,泰勒图,箱图和经验累积分布函数(ECDF)用于评估预测视野中所有模型的性能。此外,作为本文的另一个新颖性,基于先前预测值的递归预测模型用于提高ANFIS-GWO在递归预测中的准确性和适用性。我们的研究结果表明:(1)ANFIS-GWO的杂种显着提高了预测准确性。 (2)ANFIS-GWO在几乎所有预测视野中比ANFI更有效地进行(ANFIS-GWO1:5分钟; ANFIS-GWO11:1-2天未来; ANFIS-GWO8:未来一周)。 (3)流入流量预测模型的性能受预测地平线的显着影响。计算结果证实了ANFIS-GWO P.

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