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Investigation on the Potential to Integrate Different Artificial Intelligence Models with Metaheuristic Algorithms for Improving River Suspended Sediment Predictions

机译:与成群质算法相结合不同人工智能模型的潜力调查,改善河流悬浮沉积物预测

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Suspended sediment load (SLL) prediction is a significant field in hydrology and hydraulic sciences, as sedimentation processes change the soil quality. Although the adaptive neuro fuzzy system (ANFIS) and multilayer feed-forward neural network (MFNN) have been widely used to simulate hydrological variables, improving the accuracy of the above models is an important issue for hydrologists. In this article, the ANFIS and MFNN models were improved by the bat algorithm (BA) and weed algorithm (WA). Thus, the current paper introduces improved ANFIS and MFNN models: ANFIS–BA, ANFIS–WA, MFNN–BA, and MFNN–WA. The models were validated by applying river discharge, rainfall, and monthly suspended sediment load (SSL) for the Atrek basin in Iran. In addition, seven input groups were used to predict monthly SSL. The best models were identified through root-mean-square error (RMSE), Nash–Sutcliff efficiency (NSE), standard deviation ratio (RSR), percent bias (PBIAS) indices, and uncertainty analysis. For the ANFIS–BA model, RMSE and RSR varied from 1.5 to 2.5 ton/d and from 5% to 25%, respectively. In addition, a variation range of NSE was between very good and good performance (0. 75 to 0.85 and 0.85 to 1). The uncertainty analysis showed that the ANFIS–BA had more reliable performance compared to other models. Thus, the ANFIS–BA model has high potential for predicting SSL.
机译:悬浮沉积物负荷(SLL)预测是水文和水力科学中的重要领域,因为沉降过程改变了土壤质量。虽然自适应神经模糊系统(ANFIS)和多层前馈神经网络(MFNN)已被广泛用于模拟水文变量,但提高上述模型的准确性是水文学家的重要问题。在本文中,BAT算法(BA)和杂草算法(WA)改善了ANFIS和MFNN模型。因此,本文介绍了改进的ANFIS和MFNN型号:ANFIS-BA,ANFIS-WA,MFNN-BA和MFNN-WA。通过在伊朗的Atrek盆地应用河流放电,降雨和月悬浮沉积物(SSL)来验证该模型。此外,七组用于预测每月SSL。通过根均方误差(RMSE),NASH-SUTCLIFF效率(NSE),标准偏差比(RSR),偏差(PBIAS)指数以及不确定性分析来识别最佳模型。对于ANFIS-BA型号,RMSE和RSR分别从1.5到2.5吨/ d不同,分别为5%至25%。此外,NSE的变化范围在非常好的和良好的性能之间(0.75至0.85和0.85至1)之间。不确定性分析表明,与其他模型相比,ANFIS-BA具有更可靠的性能。因此,ANFIS-BA模型具有高潜力的预测SSL。

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