Application of Neural Network Modeling in Problems of Predicting the Level of River Floods

T. M. Shamsutdinova
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Abstract

The purpose of this article is to consider the theoretical and practical issues of developing neural network models for river flood forecasting (in case of the Belaya River near Ufa), as well as to implement the corresponding neural network in Python. To build a training sample, archival data from meteorological services and meteorological observation sites for the flood periods of the Belaya (Agidel) River in 2018–2022 were used. The following indicators were collected and analyzed: water level, water temperature, day and night air temperature, precipitation, snow depth, including information about the pre-flood condition of the snow cover. The software implementation of the neural network was performed using the PyTorch deep learning library; in addition, modules from the Matplotlib and Pandas libraries were used. The stability of the operation of this neural network was studied when the following parameters were changed: the optimizers used (Adam, Adamax and Rprop); learning rate coefficient; the number of neurons in the hidden layer; number of learning epochs. It is concluded that the developed neural network can be used to model the flood level when creating short-term forecasts. In order to move to longer-term forecasts in the future, it is planned to further expand the size of the factors in the training sample.
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神经网络建模在河流洪水水位预测中的应用
本文的目的是考虑开发用于河流洪水预报的神经网络模型的理论和实践问题(以乌法附近的贝拉亚河为例),以及在Python中实现相应的神经网络。为了构建训练样本,使用了2018-2022年Belaya (Agidel)河汛期气象部门和气象观测站的档案数据。收集并分析了水位、水温、昼夜气温、降水、雪深等指标,包括积雪在洪水前的状况信息。神经网络的软件实现使用PyTorch深度学习库;此外,还使用了Matplotlib和Pandas库中的模块。研究了该神经网络在改变以下参数时的运行稳定性:使用的优化器(Adam、Adamax和Rprop);学习率系数;隐藏层神经元数量;学习周期数。结果表明,所建立的神经网络可用于洪水水位的短期预报。为了在未来进行更长期的预测,计划进一步扩大训练样本中因素的大小。
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