Artificial Intelligence Hybrid Deep Learning Model for Groundwater Level
Prediction Using MLP-ADAM
- URL: http://arxiv.org/abs/2107.13870v1
- Date: Thu, 29 Jul 2021 10:11:45 GMT
- Title: Artificial Intelligence Hybrid Deep Learning Model for Groundwater Level
Prediction Using MLP-ADAM
- Authors: Pejman Zarafshan, Saman Javadi, Abbas Roozbahani, Seyed Mehdi Hashemy,
Payam Zarafshan, Hamed Etezadi
- Abstract summary: In this paper, a multi-layer perceptron is applied to simulate groundwater level.
The adaptive moment estimation algorithm is also used to this matter.
Results indicate that deep learning algorithms can demonstrate a high accuracy prediction.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Groundwater is the largest storage of freshwater resources, which serves as
the major inventory for most of the human consumption through agriculture,
industrial, and domestic water supply. In the fields of hydrological, some
researchers applied a neural network to forecast rainfall intensity in
space-time and introduced the advantages of neural networks compared to
numerical models. Then, many researches have been conducted applying
data-driven models. Some of them extended an Artificial Neural Networks (ANNs)
model to forecast groundwater level in semi-confined glacial sand and gravel
aquifer under variable state, pumping extraction and climate conditions with
significant accuracy. In this paper, a multi-layer perceptron is applied to
simulate groundwater level. The adaptive moment estimation optimization
algorithm is also used to this matter. The root mean squared error, mean
absolute error, mean squared error and the coefficient of determination ( ) are
used to evaluate the accuracy of the simulated groundwater level. Total value
of and RMSE are 0.9458 and 0.7313 respectively which are obtained from the
model output. Results indicate that deep learning algorithms can demonstrate a
high accuracy prediction. Although the optimization of parameters is
insignificant in numbers, but due to the value of time in modelling setup, it
is highly recommended to apply an optimization algorithm in modelling.
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