利用融合混合深度学习集合预测尼日利亚南部的降雨径流

A. Ojugo, P. Ejeh, C. Odiakaose, Andrew Okonji Eboka, F. Emordi
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引用次数: 0

摘要

降雨作为一种环境特征,会迅速发生变化,并对下游水文(即径流)产生重大影响,带来侵蚀、水质和基础设施等各种问题。这些反过来又会影响一个国家的生活质量、污水处理系统、农业和旅游业等等。由于径流具有混乱、复杂和动态的性质,因此有必要通过预测模型来研究径流的未来走向。由于在使用知识驱动模型方面收效甚微,许多研究现在转向了数据驱动模型。数据集取自尼日利亚拉各斯气象中心 1999-2019 年期间贝宁-奥韦纳河流域的数据。数据分为两部分:70% 用于训练,30% 用于测试。我们的研究采用了时空轮廓隐藏马尔科夫训练的深度神经网络。结果显示,灵敏度为 0.9,特异度为 0.19,准确度为 0.74,分类改进率为 0.12。与提出的模型相比,其他集合的表现不佳。该研究揭示了年降雨量受变异周期的影响。模型将有助于模拟未来的洪水,并为洪水管理提供预警。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting rainfall runoff in Southern Nigeria using a fused hybrid deep learning ensemble
Rainfall as an environmental feat can change fast and yield significant influence in downstream hydrology known as runoff with a variety of implications such as erosion, water quality, and infrastructures. These, in turn impact the quality of life, sewage systems, agriculture, and tourism of a nation to mention a few. It chaotic, complex, and dynamic nature has necessitated studies in the quest for future direction of such runoff via prediction models. With little successes in use of knowledge driven models, many studies have now turned to data-driven models. Dataset is retrieved from Metrological Center in Lagos, Nigeria for the period 1999-2019 for the Benin-Owena River Basin. Data is split: 70% for train and 30% for test. Our study adapts a spatial-temporal profile hidden Markov trained deep neural network. Result yields a sensitivity of 0.9, specificity 0.19, accuracy of 0.74, and improvement rate of classification of 0.12. Other ensembles underperformed when compared to proposed model. The study reveals annual rainfall is an effect of variation cycle. Models will help simulate future floods and provide lead time warnings in flood management.
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