Assessment and Prediction of Maize Production Considering Climate Change by Extreme Learning Machine in Czechia
Mansoor Maitah,
Karel Malec,
Ying Ge,
Zdeňka Gebeltová,
Luboš Smutka,
Vojtěch Blažek,
Ludmila Pánková,
Kamil Maitah,
Jiří Mach
Affiliations
Mansoor Maitah
Department of Economics, Faculty of Economics and Management, Czech University of Life Sciences Prague, 16500 Prague, Czech Republic
Karel Malec
Department of Economics, Faculty of Economics and Management, Czech University of Life Sciences Prague, 16500 Prague, Czech Republic
Ying Ge
Department of Landscape and Urban Planning, Faculty of Environmental Sciences, Czech University of Life Sciences Prague, Kamýcká 129, 16500 Praha–Suchdol, Czech Republic
Zdeňka Gebeltová
Department of Economics, Faculty of Economics and Management, Czech University of Life Sciences Prague, 16500 Prague, Czech Republic
Luboš Smutka
Department of Trade and Finance, Faculty of Economics and Management, Czech University of Life Sciences Prague, 16500 Prague, Czech Republic
Vojtěch Blažek
Department of Geography, Faculty of Education, University of South Bohemia, 37115 České Budějovice, Czech Republic
Ludmila Pánková
Department of Economics, Faculty of Economics and Management, Czech University of Life Sciences Prague, 16500 Prague, Czech Republic
Kamil Maitah
Department of Trade and Finance, Faculty of Economics and Management, Czech University of Life Sciences Prague, 16500 Prague, Czech Republic
Jiří Mach
Department of Economics, Faculty of Economics and Management, Czech University of Life Sciences Prague, 16500 Prague, Czech Republic
Machine learning algorithms have been applied in the agriculture field to forecast crop productivity. Previous studies mainly focused on the whole crop growth period while different time windows on yield prediction were still unknown. The entire growth period was separated into each month to assess their corresponding predictive ability by taking maize production (silage and grain) in Czechia. We present a thorough assessment of county-level maize yield prediction in Czechia using a machine learning algorithm (extreme learning machine (ELM)) and an extensive set of weather data and maize yields from 2002 to 2018. Results show that sunshine in June and water deficit in July were vastly influential factors for silage maize yield. The two primary climate parameters for grain maize yield are minimum temperature in September and water deficit in May. The average absolute relative deviation (AARD), root mean square error (RMSE), and coefficient (R2) of the proposed models are 6.565–32.148%, 1.006–1.071%, 0.641–0.716, respectively. Based on the results, silage yield will decrease by 1.367 t/ha (3.826% loss), and grain yield will increase by 0.337 t/ha (5.394% increase) when the max temperature in May increases by 2 °C. In conclusion, ELM models show a great potential application for predicting maize yield.