Developing novel hybrid models for estimation of daily soil temperature at various depths

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Date

2020

Authors

Saeid Mehdizadeh
Farshad Fathian
Mir Jafar Sadegh Safari
Ali Khosravi

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier B.V.

Open Access Color

Green Open Access

Yes

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No
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Top 1%
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Top 10%
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Top 10%

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Abstract

Estimation of soil temperature (ST) as one of the vital parameters of soil which has an impact on many chemical and physical characteristics of soil is of great importance in soil science. This study applies a time series-based model namely fractionally autoregressive integrated moving average (FARIMA) as well as two machine learning-based models consisting of feed-forward back propagation neural networks (FFBPNN) and gene expression programming (GEP) for daily ST estimation. In doing so the daily ST data of three stations at four depths (5 10 50 and 100 cm) in Iran were used for the time period from 1998 to 2017. Studied stations were selected from different climates including arid (Isfahan station) semi-arid (Urmia station) and very humid (Rasht station) to evaluate the performance of models and generalize the outcomes in different climate classes. The performances of the developed models are evaluated via three statistical metrics including the root mean square error (RMSE) mean absolute error (MAE) and relative RMSE (RRMSE). Results obtained demonstrated that the machine learning-based FFBPNN and GEP models performed better than the time series-based FARIMA approach at all depths. As a result negligible differences were observed between the accuracies of FFBPNN and GEP. In addition this study developed novel hybrid models through combining the FFBPNN and GEP techniques with the FARIMA to enhance the accuracy of traditional FARIMA FFBPNN and GEP. The developed hybrid models named GEP-FARIMA and FFBPNN-FARIMA were found to achieve better estimates of daily ST data at different depths in comparison with the classical models. The daily ST estimates with the highest accuracy were observed at a depth of 50 cm via the GEP-FARIMA at Isfahan station (RMSE = 0.05 °C MAE = 0.03 °C RRMSE = 0.25% for the testing phase) the GEP-FARIMA at Urmia station (RMSE = 0.04 °C MAE = 0.03 °C RRMSE = 0.26% for the testing phase) and the FFBPNN-FARIMA at Rasht station (RMSE = 0.07 °C MAE = 0.05 °C RRMSE = 0.35% for the testing phase). © 2020 Elsevier B.V. All rights reserved.

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Keywords

Daily Soil Temperature, Estimation, Feed-forward Back Propagation Neural Networks, Fractionally Autoregressive Integrated Moving Average, Gene Expression Programming, Climate Models, Estimation, Feedforward Neural Networks, Gene Expression, Machine Learning, Mean Square Error, Soils, Temperature, Time Series, Auto-regressive Integrated Moving Average, Chemical And Physical Characteristics, Feed-forward Back-propagation Neural Networks, Gene Expression Programming, Mean Absolute Error, Root Mean Square Errors, Soil Temperature, Vital Parameters, Backpropagation, Artificial Neural Network, Back Propagation, Estimation Method, Machine Learning, Soil Depth, Soil Temperature, Vector Autoregression, Esfahan [iran], Gilan, Iran, Orumiyeh, Rasht, West Azerbaijan, Climate models, Estimation, Feedforward neural networks, Gene expression, Machine learning, Mean square error, Soils, Temperature, Time series, Auto-regressive integrated moving average, Chemical and physical characteristics, Feed-forward back-propagation neural networks, Gene expression programming, Mean absolute error, Root mean square errors, Soil temperature, Vital parameters, Backpropagation, artificial neural network, back propagation, estimation method, machine learning, soil depth, soil temperature, vector autoregression, Esfahan [Iran], Gilan, Iran, Orumiyeh, Rasht, West Azerbaijan, Estimation, Feed-Forward Back Propagation Neural Networks, Gene Expression Programming, Fractionally Autoregressive Integrated Moving Average, Daily Soil Temperature, Feed-forward back propagation neural networks, Fractionally autoregressive integrated moving average, Fee-forward back propagation neural networks, Gene expression programming, Daily soil temperature, Estimation, ta218

Fields of Science

0207 environmental engineering, 02 engineering and technology, 01 natural sciences, 0105 earth and related environmental sciences

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WoS Q

Scopus Q

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OpenCitations Citation Count
46

Source

Soil and Tillage Research

Volume

197

Issue

Start Page

104513

End Page

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CrossRef : 46

Scopus : 53

Captures

Mendeley Readers : 41

SCOPUS™ Citations

53

checked on Apr 09, 2026

Web of Science™ Citations

45

checked on Apr 09, 2026

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