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A sequential approach for short-term water level prediction using nonlinear autoregressive neural networks

机译:一种使用非线性自回归神经网络的短期水位预测顺序方法

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The water level in an artificial lake is important not only for the production of electric energy but also for other activities such as tourism, irrigation and drought control. The water level in the lake is influenced by various factors, among which the most important include: the water inflow, discharge of water and water seepage. In this research, artificial neural networks (ANN) are selected for the water level prediction because of their well-known abilities for learning from examples. A total of 29 years of water level measurement data was used for ANN training and validation. This paper represents a sequential approach for the short-term water level prediction in Jablanicko lake by using only water level data. With regard to sequential approach for every step of the prediction, the most recent data were used for ANN training. Two types of ANNs were used in this study: Nonlinear Autoregressive (NAR) neural networks and Feed Forward Back Propagation (FFBP) neural networks. The main focus of this study was on NAR networks prediction of water level, while FFBP networks were used for comparison purposes. The results showed that neural networks can provide quality water level prediction even if only water level data is used.
机译:人工湖中的水位不仅适用于电能的生产而且对于其他活动,如旅游,灌溉和干旱控制。湖中的水位受到各种因素的影响,其中最重要的包括:水流入,水和水渗出。在该研究中,由于他们从示例的学习的众所周知的能力,选择了人工神经网络(ANN)用于水位预测。共有29年的水位测量数据用于ANN培训和验证。本文代表了Jaultanicko Lake仅使用水位数据的短期水位预测顺序方法。关于预测每一步的顺序方法,最近的数据用于ANN培训。本研究中使用了两种ANNS:非线性自回归(NAR)神经网络和馈送前后传播(FFBP)神经网络。本研究的主要重点是在NAR网络预测水位,而FFBP网络用于比较目的。结果表明,即使仅使用水位数据,神经网络也可以提供优质的水位预测。

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