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Application of Integrated Artificial Neural Networks Based on Decomposition Methods to Predict Streamflow at Upper Indus Basin, Pakistan

机译:基于分解方法的集成人工神经网络在巴基斯坦上印度河盆地流向预测中的应用

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Consistent streamflow forecasts play a fundamental part in flood risk mitigation. Population increase and water cycle intensification are extending not only globally but also among Pakistan’s water resources. The frequency of floods has increased in the last few decades in the country, which emphasizes the importance of efficient practices needed to adopt for various aspects of water resource management such as reservoir scheduling, water sustainability, and water supply. The purpose of this study is to develop a novel hybrid model for streamflow forecasting and validate its efficiency at the upper Indus basin (UIB), Pakistan. Maximum streamflow in the River Indus from its upper mountain basin results from melting snow or glaciers and climatic unevenness of both precipitation and temperature inputs, which will, therefore, affect rural livelihoods at both a local and a regional scale through effects on runoff in the Upper Indus basin (UIB). This indicates that basins receive the bulk of snowfall input to sustain the glacier system. The present study will help find the runoff from high altitude catchments and estimated flood occurrence for the proposed and constructed hydropower projects of the Upper Indus basin (UIB). Due to climate variability, the upper Indus basin (UIB) was further divided into three zone named as sub-zones, zone one (z1), zone two (z2), and zone three (z3). The hybrid models are designed by incorporating artificial intelligence (AI) models, which includes Feedforward backpropagation (FFBP) and Radial basis function (RBF) with decomposition methods. This includes a discrete wavelet transform (DWT) and ensemble empirical mode decomposition (EEMD). On the basis of the autocorrelation function and the cross-correlation function of streamflow, precipitation and temperature inputs are selected for all developed models. Data have been analyzed by comparing the simulation outputs of the models with a correlation coefficient (R), root mean square errors (RMSE), Nash-Sutcliffe Efficiency (NSE), mean absolute percentage error (MAPE), and mean absolute errors (MAE). The proposed hybrid models have been applied to monthly streamflow observations from three hydrological stations and 17 meteorological stations in the UIB. The results show that the prediction accuracy of the decomposition-based models is usually better than those of AI-based models. Among the DWT and EEMD based hybrid model, EEMD has performed significantly well when compared to all other hybrid and individual AI models. The peak value analysis is also performed to confirm the results’ precision rate during the flood season (May-October). The detailed comparative analysis showed that the RBFNN integrated with EEMD has better forecasting capabilities as compared to other developed models and EEMD-RBF can capture the nonlinear characteristics of the streamflow time series during the flood season with more precision.
机译:一致的流量预测在减轻洪水风险中起着重要作用。人口增长和水循环加剧不仅在全球范围内,而且也在巴基斯坦的水资源中扩展。在过去的几十年中,洪灾的频率在增加,这突显了在水资源管理的各个方面(如水库调度,水的可持续性和供水)必须采取有效措施的重要性。这项研究的目的是开发一种新的混合模型用于流量预报,并验证其在巴基斯坦上印度河流域(UIB)的效率。来自上流高山盆地的印度河的最大流量是由于融雪或冰川以及降水和温度输入的气候不均匀造成的,因此,将通过影响上流的径流在地方和区域范围内影响农村生计印度河流域(UIB)。这表明流域接受了大量降雪输入以维持冰川系统。本研究将有助于从上印度河流域(UIB)的拟建和建设中的水电项目中,从高海拔集水区和估计的洪水发生中寻找径流。由于气候的变化,印度河上游盆地(UIB)被进一步分为三个区域,分别称为子区域,区域一(z1),区域二(z2)和区域三(z3)。混合模型是通过结合人工智能(AI)模型进行设计的,其中包括前馈反向传播(FFBP)和径向基函数(RBF)以及分解方法。这包括离散小波变换(DWT)和集成经验模式分解(EEMD)。基于流的自相关函数和互相关函数,为所有已开发模型选择降水和温度输入。通过将模型的仿真输出与相关系数(R),均方根误差(RMSE),纳什-苏克利夫效率(NSE),平均绝对百分比误差(MAPE)和平均绝对误差(MAE)进行比较来分析数据)。拟议的混合模型已应用于UIB中三个水文站和17个气象站的月流量观测。结果表明,基于分解的模型的预测精度通常要优于基于AI的模型。在基于DWT和EEMD的混合模型中,与所有其他混合模型和单个AI模型相比,EEMD表现出色。还会执行峰值分析,以确认洪水季节(5月至10月)中结果的准确率。详细的比较分析表明,与其他已开发的模型相比,与EEMD集成的RBFNN具有更好的预测能力,并且EEMD-RBF可以更准确地捕获汛期水流时间序列的非线性特征。

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