Remote sensing-based winter wheat yield estimation integrating machine learning and crop growth multi-scenario simulations
Accurate and timely winter wheat yield prediction is critical for effective agricultural management and food security. This study used the World Food Studies (WOFOST) model, a widely adopted crop growth simulation model, to dynamically simulate winter wheat yield under various growth scenarios to pr...
Saved in:
Main Authors: | , , , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Taylor & Francis Group
2025-12-01
|
Series: | International Journal of Digital Earth |
Subjects: | |
Online Access: | https://www.tandfonline.com/doi/10.1080/17538947.2024.2443470 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
_version_ | 1832583873235517440 |
---|---|
author | Xin Du Jiong Zhu Jingyuan Xu Qiangzi Li Zui Tao Yuan Zhang Hongyan Wang Haoxuan Hu |
author_facet | Xin Du Jiong Zhu Jingyuan Xu Qiangzi Li Zui Tao Yuan Zhang Hongyan Wang Haoxuan Hu |
author_sort | Xin Du |
collection | DOAJ |
description | Accurate and timely winter wheat yield prediction is critical for effective agricultural management and food security. This study used the World Food Studies (WOFOST) model, a widely adopted crop growth simulation model, to dynamically simulate winter wheat yield under various growth scenarios to produce a simulated dataset. Based on this dataset, custom yield estimation models were developed based on available remote sensing data. Validation with field-measured and county-level statistics demonstrated a robust and spatially extensive capability for accurate yield estimation, with R2, RMSE, and MRE values of 0.57, 424.80 kg/ha, and 6.57% at the plot level, and 0.58, 345.53 kg/ha, and 4.93% at the county level, notably improving on traditional field-based methods (R2 = 0.03–0.46) that primarily rely on limited field surveys and statistical models. Model simplification showed that accuracy decreased when fewer remote sensing images were used, yet achieved reasonable estimates (two temporal phases: R2 of 0.41/0.40 at plot/county level). Findings highlighted that data collection during key growth stages is essential for accuracy, and that a dataset of at least 5,000 records suffices for reliable results. This study offers important insights and direction for enhancing yield prediction with efficient data acquisition and modeling strategies in large-scale applications. |
format | Article |
id | doaj-art-f0e543fede4049fc9165fefacba2b260 |
institution | Kabale University |
issn | 1753-8947 1753-8955 |
language | English |
publishDate | 2025-12-01 |
publisher | Taylor & Francis Group |
record_format | Article |
series | International Journal of Digital Earth |
spelling | doaj-art-f0e543fede4049fc9165fefacba2b2602025-01-28T04:23:26ZengTaylor & Francis GroupInternational Journal of Digital Earth1753-89471753-89552025-12-0118110.1080/17538947.2024.2443470Remote sensing-based winter wheat yield estimation integrating machine learning and crop growth multi-scenario simulationsXin Du0Jiong Zhu1Jingyuan Xu2Qiangzi Li3Zui Tao4Yuan Zhang5Hongyan Wang6Haoxuan Hu7Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing, People’s Republic of ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing, People’s Republic of ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing, People’s Republic of ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing, People’s Republic of ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing, People’s Republic of ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing, People’s Republic of ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing, People’s Republic of ChinaAerospace Information Research Institute, Chinese Academy of Sciences, Beijing, People’s Republic of ChinaAccurate and timely winter wheat yield prediction is critical for effective agricultural management and food security. This study used the World Food Studies (WOFOST) model, a widely adopted crop growth simulation model, to dynamically simulate winter wheat yield under various growth scenarios to produce a simulated dataset. Based on this dataset, custom yield estimation models were developed based on available remote sensing data. Validation with field-measured and county-level statistics demonstrated a robust and spatially extensive capability for accurate yield estimation, with R2, RMSE, and MRE values of 0.57, 424.80 kg/ha, and 6.57% at the plot level, and 0.58, 345.53 kg/ha, and 4.93% at the county level, notably improving on traditional field-based methods (R2 = 0.03–0.46) that primarily rely on limited field surveys and statistical models. Model simplification showed that accuracy decreased when fewer remote sensing images were used, yet achieved reasonable estimates (two temporal phases: R2 of 0.41/0.40 at plot/county level). Findings highlighted that data collection during key growth stages is essential for accuracy, and that a dataset of at least 5,000 records suffices for reliable results. This study offers important insights and direction for enhancing yield prediction with efficient data acquisition and modeling strategies in large-scale applications.https://www.tandfonline.com/doi/10.1080/17538947.2024.2443470Winter wheatyieldcrop growth modelsimulated datasetSentinel-2 |
spellingShingle | Xin Du Jiong Zhu Jingyuan Xu Qiangzi Li Zui Tao Yuan Zhang Hongyan Wang Haoxuan Hu Remote sensing-based winter wheat yield estimation integrating machine learning and crop growth multi-scenario simulations International Journal of Digital Earth Winter wheat yield crop growth model simulated dataset Sentinel-2 |
title | Remote sensing-based winter wheat yield estimation integrating machine learning and crop growth multi-scenario simulations |
title_full | Remote sensing-based winter wheat yield estimation integrating machine learning and crop growth multi-scenario simulations |
title_fullStr | Remote sensing-based winter wheat yield estimation integrating machine learning and crop growth multi-scenario simulations |
title_full_unstemmed | Remote sensing-based winter wheat yield estimation integrating machine learning and crop growth multi-scenario simulations |
title_short | Remote sensing-based winter wheat yield estimation integrating machine learning and crop growth multi-scenario simulations |
title_sort | remote sensing based winter wheat yield estimation integrating machine learning and crop growth multi scenario simulations |
topic | Winter wheat yield crop growth model simulated dataset Sentinel-2 |
url | https://www.tandfonline.com/doi/10.1080/17538947.2024.2443470 |
work_keys_str_mv | AT xindu remotesensingbasedwinterwheatyieldestimationintegratingmachinelearningandcropgrowthmultiscenariosimulations AT jiongzhu remotesensingbasedwinterwheatyieldestimationintegratingmachinelearningandcropgrowthmultiscenariosimulations AT jingyuanxu remotesensingbasedwinterwheatyieldestimationintegratingmachinelearningandcropgrowthmultiscenariosimulations AT qiangzili remotesensingbasedwinterwheatyieldestimationintegratingmachinelearningandcropgrowthmultiscenariosimulations AT zuitao remotesensingbasedwinterwheatyieldestimationintegratingmachinelearningandcropgrowthmultiscenariosimulations AT yuanzhang remotesensingbasedwinterwheatyieldestimationintegratingmachinelearningandcropgrowthmultiscenariosimulations AT hongyanwang remotesensingbasedwinterwheatyieldestimationintegratingmachinelearningandcropgrowthmultiscenariosimulations AT haoxuanhu remotesensingbasedwinterwheatyieldestimationintegratingmachinelearningandcropgrowthmultiscenariosimulations |