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首页> 外文期刊>Water Resources Management >New Approach for Sediment Yield Forecasting with a Two-Phase Feedforward Neuron Network-Particle Swarm Optimization Model Integrated with the Gravitational Search Algorithm
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New Approach for Sediment Yield Forecasting with a Two-Phase Feedforward Neuron Network-Particle Swarm Optimization Model Integrated with the Gravitational Search Algorithm

机译:与引力搜索算法集成的二相前馈神经元网络粒子群泥浆优化模型的新方法

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Predicting sediment yield is an important task for decision-makers in environmental monitoring and water management since the benefits of applying non-linear, artificial intelligence (AI) models for optimal prediction can be far reaching in real-life decision support systems. AI-based models are considered to be favorable predictive tools since the nonlinear nature of suspended sediment data series warrants the utilization of nonlinear predictive methods for feature extraction, and for accurate simulation of suspended sediment load. In this study, Artificial Neural Network (ANN) approaches are employed to estimate the monthly sediment load where the two-phase Feed-forward Neuron Network Particle Swarm Optimization Gravitational Search Algorithm (FNN-PSOGSA) is developed, and then evaluated in respect to 3 distinct algorithms: the Adaptive Neuro-Fuzzy Inference System (ANFIS), Feed-forward Neuron Network (FNN) and the single-phase Feed-forward Neuron Network Particle Swarm Optimization (FNN-PSO). The study is carried out using the monthly rainfall, runoff and sediment data spanning a 10year period (2000-2009) where about 75% of data are used in model training phase, 25% in testing phase. Three statistical performance criteria namely: the mean absolute error (MAE), Nash-Sutcliffe coefficient (NSE) and the Willmott's Index (WI) and diagnostic plots visualizing the tested results are used to evaluate the performance of four AI-based models. The results reveal that the objective model (the two-phase FNN-PSOGSA model) and the single-phase FNN-PSO model yielded more precise results compared to the other forecast models. This result accorded to an NSE value of 0.612 (for the FNN-PSOGSA model) vs. an NS value of 0.500, 0.331 and 0.244 for the FNN-PSO, FNN and ANFIS models, and WI=0.832 vs. 0.771, 0.692 and 0.726, respectively The study also demonstrated that the FNN model generated slightly better results than the ANFIS model for the estimation of sediment load data but overall, the two-phase FNN-PSOGSA model outperformed all comparison models. In light of the superior performance, this research advocates that the fully-optimized two-phase FNN-PSOGSA model can be explored as a decision-support tool for monthly sediment load forecasting using the rainfall and runoff values as the predictor datasets.
机译:预测沉积物产量是环境监测和水管理中决策者的重要任务,因为应用非线性的人工智能(AI)模型用于最佳预测的益处,可以在现实生活决策支持系统中达到远远。基于AI的模型被认为是有利的预测工具,因为悬浮沉积物数据系列的非线性性质是为了利用非线性预测方法的特征提取,以及精确模拟悬浮沉积物负荷。在这项研究中,采用人工神经网络(ANN)方法来估计开发两相前馈神经元网络粒子群(FNN-PSOGSA)的月度沉积物负荷,然后在3中进行评估独特的算法:自适应神经模糊推理系统(ANFIS),前馈神经元网络(FNN)和单相前馈神经元网络粒子群综合优化(FNN-PSO)。该研究是使用跨越10年期间(2000-2009)的月度降雨,径流和沉积物数据进行的,其中约75%的数据用于模型训练阶段,测试阶段25%。三个统计性能标准即:平均绝对误差(MAE),NASH-SUTCLIFFE系数(NSE)和WILLMOTT的索引(WI)和可视化测试结果的诊断图来评估基于AI的四个模型的性能。结果表明,与其他预测模型相比,目标模型(两相FNN-PSOGSA模型)和单相FNN-PSO模型产生了更精确的结果。该结果符合NSE值为0.612(对于FNN-PSOGSA模型)与FNN-PSO,FNN和ANFIS模型的NS值为0.500,0.331和0.244,以及Wi = 0.832与0.771,0.692和0.726 ,该研究还分别表明,FNN模型产生比ANFI模型略好产生略高,用于估计沉积物负荷数据,但总体而言,两相FNN-PSOGSA模型表现优于所有比较模型。鉴于卓越的性能,这项研究倡导完全优化的两阶段FNN-PSOGSA模型可以探索作为每月沉积物负荷预测的决策支持工具,用于使用降雨和径流值作为预测测量数据集。

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