Comparison of the hydrological time series modeling by the floods in river Indus of Pakistan

Salman Bin Sami, Sobia Shakeel, Reema Salman
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Abstract

Today, in the field of science and technology, huge forecasting applications are used by scholars to forecast future values. Nowadays, using estimating the flood forecasting for peak flow discharges is very common for the risk assessment annually by quantitative data collections from different resources. The very famous and longest rivers of Pakistan i.e. Indus River and other rivers too like River Jhelum, River Kabul, and River Chenab are the prime sources of flooding. These rivers are the prime tributaries of the Indus River System. Pakistan's longest river, River Indus, is connected with the seven (7) gauge stations called Dams and barrages, and they are playing a vital role in the generation of electricity and also in irrigation for Pakistan. In this research paper, we calculated the flood risk for the Indus using the streamflow discharges on the daily basis. At present, Adaptive Neuro-Fuzzy Inference System (ANFIS) model is widely used to analyze these hydrological time series data. Adaptive Neuro-Fuzzy Inference Systems (ANFIS) merges the potentiality of Fuzzy Inference Systems (FIS) and Artificial Neural Networks (ANN) to work out problems of different kinds. For this purpose, we used the data for the years from 2002 to 2012 daily (6-months each year) streamflow period. In our analysis, the root means square error (RMSE) shows that the ANFIS model generated more satisfactory results than other models with minimum prediction errors. The ANFIS model is more reliable and has the feasibility of integrating the essence of a fuzzy system into the real world.1–28
巴基斯坦印度河洪水水文时间序列模拟的比较
今天,在科学技术领域,大量的预测应用被学者们用来预测未来的价值。目前,利用不同来源的定量数据,对洪峰流量进行洪水预测,是每年进行洪水风险评估的一种常见方法。巴基斯坦非常著名和最长的河流,即印度河和其他河流,如杰勒姆河、喀布尔河和奇纳布河,都是洪水的主要来源。这些河流是印度河水系的主要支流。巴基斯坦最长的河流,印度河,连接着被称为水坝和拦河坝的7个测量站,它们在巴基斯坦的发电和灌溉中起着至关重要的作用。在本文中,我们利用日流量计算了印度河的洪水风险。目前广泛采用自适应神经模糊推理系统(ANFIS)模型对水文时间序列数据进行分析。自适应神经模糊推理系统(ANFIS)融合了模糊推理系统(FIS)和人工神经网络(ANN)的潜力来解决不同类型的问题。为此,我们使用了2002年至2012年每日(每年6个月)流量期的数据。在我们的分析中,均方根误差(RMSE)表明,ANFIS模型比其他预测误差最小的模型产生了更令人满意的结果。ANFIS模型更可靠,具有将模糊系统的本质融入现实世界的可行性1 - 28
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