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River tide level prediction: A data mining approach for hydrographie time series data analysis

机译:潮汐水位预测:水文时间序列数据分析的数据挖掘方法

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Prediction is one of the most complicated and challenging tasks; if it comes to tidal prediction then it becomes more complicated because of the chaotic nature of gradual increment in water level. Since Bangladesh is a low lying land, performing tidal prediction in seaport area is really a key factor since the economy of the country largely depends on the smooth operations of exports and imports in the 3 major seaports. Predicting hundred percent accurate tide levels is very difficult. The main objective of this study was to propose a good machine learning model with the aid of data mining techniques for the projection of water level with higher accuracy for Karnaphuli River, which is one of the mainstream rivers in Bangladesh. The river comprises of 4 major boatyards and shipyards for anchoring lighter ship vassals and boats; those are Sadarghat, Kalurghat, Canal no-10, Canal no-18. For undertaking the experiments, we collect 5years (2008-2012) historical tide level dataset of Karnaphuli River from Chittagong Sea Port Authority (CPA). Finally, we got our proposed model that can predict tide level with more than 96% accuracy in overall scenarios, which outperform the previous models that are used in literature review and reference sections.
机译:预测是最复杂和最具挑战性的任务之一。如果涉及潮汐预报,则由于水位逐渐增加的混沌性质,它将变得更加复杂。由于孟加拉国地势低洼,因此在海港地区进行潮汐预报确实是关键因素,因为该国的经济很大程度上取决于三个主要海港的进出口贸易的平稳运行。预测100%准确的潮汐水平非常困难。这项研究的主要目的是借助数据挖掘技术,提出一个好的机器学习模型,以更准确地预测孟加拉国的主流河流之一的卡纳普利河的水位。河流由4个主要造船厂和造船厂组成,用于锚固较轻的船只附庸国和船只;这些是Sadarghat,Kalurghat,10号运河,18号运河。为了进行实验,我们从吉大港海港管理局(CPA)收集了卡纳普利河的5年(2008-2012年)历史潮位数据集。最后,我们提出了可以在整体场景中以96%以上的精度预测潮汐水位的模型,该模型优于文献综述和参考部分中使用的先前模型。

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