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  • Limnological Review is published by MDPI from Volume 22 Issue 1 (2022). Previous articles were published by another publisher in Open Access under a CC-BY (or CC-BY-NC-ND) licence, and they are hosted by MDPI on mdpi.com as a courtesy and upon agreement with Sciendo.
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29 October 2015

Application of Artificial Neural Networks (ANN) in Lake Drwęckie Water Level Modelling

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1
Department of Hydrology and Water Management, Faculty of Earth Sciences, Nicolaus Copernicus University, Lwowska 1, 80-100 Toruń, Poland
2
Department of Engineering Management, Faculty of Management, AGH University, Gramatyka 10, 30-067 Kraków, Poland
*
Author to whom correspondence should be addressed.

Abstract

This paper presents an attempt to model water-level fluctuations in a lake based on artificial neural networks. The subject of research was the water level in Lake Drwęckie over the period 1980–2012. For modelling purposes, meteorological data from the weather station in Olsztyn were used. As a result of the research conducted, the model M_Meteo_Lag_3 was identified as the most accurate. This artificial neural network model has seven input neurons, four neurons in the hidden layer and one neuron in the output layer. As explanatory variables meteorological parameters (minimal, maximal and mean temperature, and humidity) and values of dependent variables from three earlier months were implemented. The paper claims that artificial neural networks performed well in terms of modelling the analysed phenomenon. In most cases (55%) the modelled value differed from the real value by an average of 7.25 cm. Only in two cases did a meaningful error occur, of 33 and 38 cm.

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