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Application of a fuzzy inference system for the prediction of longshore sediment transport

机译:模糊推理系统在长沙输沙量预测中的应用

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A fuzzy inference system (FIS) and a hybrid adaptive network-based fuzzy inference system (ANFIS), which combines a fuzzy inference system and a neural network, are used to predict and model longshore sediment transport (LST). The measurement data (field and experimental data) obtained from Kamphuis [1] and Smith et al. [2] were used to develop the model. The FIS and ANFIS models employ five inputs (breaking wave height, breaking wave angle, slope at the breaking point, peak wave period and median grain size) and one output (longshore sediment transport rate). The criteria used to measure the performances of the models include the bias, the root mean square error, the scatter index and the coefficients of determination and correlation. The results indicate that the ANFIS model is superior to the PIS model for predicting LST rates. To verify the ANFIS model, the model was applied to the Karaburun coastal region, which is located along the southwestern coast of the Black Sea. The LST rates obtained from the ANFIS model were compared with the field measurements, the CERC [3] formula, the Kamphuis [1] formula and the numerical model (LITPACK). The percentages of error between the measured rates and the calculated LST rates based on the ANFIS method, the CERC formula (K-sig = 0.39), the calibrated CERC formula (K-sig = 0.08), the Kamphuis [1] formula and the numerical model (LITPACK) are 6.5%, 413.9%, 6.9%, 15.3% and 18.1%, respectively. The comparison of the results suggests that the ANFIS model is superior to the FIS model for predicting LST rates and performs significantly better than the tested empirical formulas and the numerical model. (C) 2014 Elsevier Ltd. All rights reserved.
机译:模糊推理系统(FIS)和基于混合自适应网络的模糊推理系统(ANFIS)结合了模糊推理系统和神经网络,用于预测和建模长岸沉积物迁移(LST)。从Kamphuis [1]和Smith等人获得的测量数据(现场和实验数据)。 [2]被用来开发模型。 FIS和ANFIS模型采用五项输入(破碎波高度,破碎波角度,断点处的斜率,峰值波周期和中值粒度)和一项输出(长岸沉积物传输速率)。用于衡量模型性能的标准包括偏差,均方根误差,散布指数以及确定和相关系数。结果表明,在预测LST率方面,ANFIS模型优于PIS模型。为了验证ANFIS模型,该模型被应用于位于黑海西南海岸的Karaburun沿海地区。从ANFIS模型获得的LST率与现场测量,CERC [3]公式,Kamphuis [1]公式和数值模型(LITPACK)进行了比较。根据ANFIS方法,CERC公式(K-sig = 0.39),校准的CERC公式(K-sig = 0.08),Kamphuis [1]公式和数值模型(LITPACK)分别为6.5%,413.9%,6.9%,15.3%和18.1%。结果的比较表明,ANFIS模型在预测LST率方面优于FIS模型,并且其性能明显优于测试的经验公式和数值模型。 (C)2014 Elsevier Ltd.保留所有权利。

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