Modelling Crop Evapotranspiration and Water Use Efficiency of Maize Using Artificial Neural Network and Linear Regression Models in Biochar and Inorganic Fertilizer-Amended Soil under Varying Water Applications

Author:

Faloye Oluwaseun Temitope1234,Ajayi Ayodele Ebenezer456,Babalola Toju3ORCID,Omotehinse Oluwayomi Omotehinse7,Adeyeri Oluwafemi Ebenezer8ORCID,Adabembe Bolaji Adelanke3,Ogunrinde Akinwale Tope1ORCID,Okunola Abiodun1ORCID,Fashina Abayomi9

Affiliation:

1. Department of Agricultural and Biosystems Engineering, Landmark University, PMB 1001, Omu Aran 251103, Nigeria

2. Life on Land Research Group, Landmark University, SDG 15, Omu Aran 251103, Nigeria

3. Department of Water Resources Management and Agrometeorology, Federal University, PMB 373, Oye-Ekiti 371104, Nigeria

4. Institute for Plant Nutrition and Soil Science, Christian Albrechts University zu Kiel, Hermann Rodewald Str. 2, 24118 Kiel, Germany

5. Department of Agricultural and Environmental Engineering, Federal University of Technology, PMB 704, Akure 460114, Nigeria

6. Institute for Fourth Industrial Revolution, SE Bogoro Centre, Afe Babalola University, Ado Ekiti 360001, Nigeria

7. Department of Mining Engineering, Federal University of Technology, PMB 704, Akure 460114, Nigeria

8. School of Energy and Environment, City University of Hong Kong, Kowloon, Hong Kong

9. Department of Soil Science and Land Resources Management, Federal University, PMB 373, Oye-Ekiti 371104, Nigeria

Abstract

The deficit irrigation strategy is a well-known approach to optimize crop water use through the estimation of crop water use efficiency (CWUE). However, studies that comprehensively reported the prediction of crop evapotranspiration (ETc) and CWUE under deficit irrigation for improved water resources planning are scarce. The objective of the study is to predict seasonal ETc and CWUE of maize using multiple linear regression (MLR) and artificial neural network (ANN) models under two scenarios, i.e., (1) when only climatic parameters are considered and (2) when combining crop parameter(s) with climatic data in amended soil. Three consecutive field experimentations were carried out with biochar applied at rates of 0, 3, 6, 10 and 20 t/ha, while inorganic fertilizer was applied at rates of 0 and 300 Kg/ha, under three water regimes: 100% Full Irrigation Treatment (FIT), 80% and 60% FIT. Seasonal ETc was determined using the soil water balance method, while growth data were monitored weekly. The CWUE under each treatment was also estimated and modelled. The MLR and ANN models were developed, and their evaluations showed that the ANN model was satisfactory for the predictions of both ETc and CWUE under all soil water conditions and scenarios. However, the MLR model without crop data was poor in predicting CWUE under extreme soil water conditions (60% FIT). The coefficient of determination (R2) increased from 0.03 to 0.67, while root mean-square error (RMSE) decreased from 4.07 to 1.98 mm after the inclusion of crop data. The model evaluation suggests that using a simple model such as MLR, crop water productivity could be accurately predicted under different soil and water management conditions.

Publisher

MDPI AG

Subject

Water Science and Technology,Aquatic Science,Geography, Planning and Development,Biochemistry

Reference52 articles.

1. Brown, C., Meeks, R., Ghile, Y., and Hunu, K. (2023, April 11). An Empirical Analysis of the Effects of Climate Variables on National Level Economic Growth. World Bank Policy Research. 2010. Policy Research Working Paper 5357. Available online: https://openknowledge.worldbank.org/bitstream/handle/10986/3841/WPS5357.pdf;sequence=1.

2. Water-Yield Relations of Maize (Zea mays L.) in Temperate Climatic Conditions;Maheshwari;Maydica,2011

3. Determination of Optimal Regulated Deficit Irrigation Strategies for Maize in a Semi-Arid Environment;Tarjuelo;Agric. Water Manag.,2012

4. Postharvest Deficit Irrigation in Tatura 204 Peach: Subsequent Productivity and Water Saving;Qassim;Agric. Water Manag.,2013

5. Interaction of Water and Nitrogen on Maize Grown for Silage;Gheysari;Agric. Water Manag.,2009

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