Integrating the Sentinel-1, Sentinel-2 and topographic data into soybean yield modelling using machine learning

被引:1
|
作者
Amankulova, Khilola [1 ,4 ]
Farmonov, Nizom [1 ]
Omonov, Khasan [2 ]
Abdurakhimova, Mokhigul [3 ]
Mucsi, Laszlo [1 ]
机构
[1] Univ Szeged, Dept Geoinformat Phys & Environm Geog, Egyet Utca 2, H-6722 Szeged, Hungary
[2] Natl Res Univ, Dept Land Resources Cadastre & Geoinformat, Karshi Inst Irrigat & Agrotechnol TIIAME, Karshi, Uzbekistan
[3] Natl Res Univ, Tashkent Inst Irrigat & Agr Mechanizat Engineers, Dept State Cadastres, Tashkent, Uzbekistan
[4] Egyet Utca 2, H-6722 Szeged, Hungary
关键词
Machine learning; Sentinels; 1; and; 2; Yield estimation; Crop phenology; VEGETATION INDEXES; WHEAT YIELD; REGRESSION; FORESTS; CORN;
D O I
10.1016/j.asr.2024.01.040
中图分类号
V [航空、航天];
学科分类号
08 ; 0825 ;
摘要
It is crucial to accurately and timely estimate crop yield within field variability for sustainable management and precision farming applications. Various Earth observation systems have been developed for crop monitoring and yield prediction. However, there is a need for further research that integrates multiplatform data, advances in satellite technology, and data processing to apply this knowledge to agricultural practices. The integration of satellite imagery and environmental data has been used increasingly in recent years to predict crop yields using machine learning techniques. In recent years, VIs derived from optical satellites, particularly Sentinel 2 (S2), have gained popularity, but their availability is affected by weather conditions. On the other hand, the backscatter data from Sentinel 1 (S1) is less commonly used in agriculture due to its complex interpretation and processing, but it is not influenced by the weather. This study aims to improve the accuracy of yield predictions by combining remote sensing data with environmental variables. The use of satellite data S1 and S2 was used to identify the optimal phenological period, and a training model was developed using four machine learning techniques, including Random Forest Regression (RF), K Nearest Neighbor (KNN), Multiple Linear Regression (MLR) and Decision Tree (DT). The results showed that RF provided the highest values among the four techniques. The validation process using RF demonstrated high accuracy rates, with R 2 ranging from 0.41 to 0.89, the mean square error of the root (RMSE) ranging from 0.122 to 0.224 t/ ha, and the mean absolute error (MAE) ranging from 0.089 to 0.163 t/ha. The integration of satellite data S1 and S2 with topographical information may be useful for monitoring, mapping, and forecasting crop yields on small and fragmented farmlands. This approach can provide farmers, agricultural businesses, and policymakers with accurate and timely predictions of crop yield, which can facilitate decision making and provide early warnings for potential crop losses. (c) 2024 COSPAR. Published by Elsevier B.V. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
引用
收藏
页码:4052 / 4066
页数:15
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