Optimizing Crop Yield Estimation through Geospatial Technology: A Comparative Analysis of a Semi-Physical Model, Crop Simulation, and Machine Learning Algorithms
-
Published:2024-03-11
Issue:1
Volume:6
Page:786-802
-
ISSN:2624-7402
-
Container-title:AgriEngineering
-
language:en
-
Short-container-title:AgriEngineering
Author:
Gumma Murali Krishna1ORCID, Nukala Ramavenkata Mahesh2, Panjala Pranay1, Bellam Pavan Kumar1, Gajjala Snigdha1, Dubey Sunil Kumar3ORCID, Sehgal Vinay Kumar4ORCID, Mohammed Ismail1, Deevi Kumara Charyulu1
Affiliation:
1. Geospatial Sciences and Big Data, International Crops Research Institute for the Semi-Arid Tropics (ICRISAT), Hyderabad 502324, India 2. Faculty of Geo-Engineering, Andhra University, Visakhapatnam 530003, India 3. Mahalanobis National Crop Forecast Centre, Delhi 110012, India 4. Indian Agricultural Research Institute, Delhi 110012, India
Abstract
This study underscores the critical importance of accurate crop yield information for national food security and export considerations, with a specific focus on wheat yield estimation at the Gram Panchayat (GP) level in Bareilly district, Uttar Pradesh, using technologies such as machine learning algorithms (ML), the Decision Support System for Agrotechnology Transfer (DSSAT) crop model and semi-physical models (SPMs). The research integrates Sentinel-2 time-series data and ground data to generate comprehensive crop type maps. These maps offer insights into spatial variations in crop extent, growth stages and the leaf area index (LAI), serving as essential components for precise yield assessment. The classification of crops employed spectral matching techniques (SMTs) on Sentinel-2 time-series data, complemented by field surveys and ground data on crop management. The strategic identification of crop-cutting experiment (CCE) locations, based on a combination of crop type maps, soil data and weather parameters, further enhanced the precision of the study. A systematic comparison of three major crop yield estimation models revealed distinctive gaps in each approach. Machine learning models exhibit effectiveness in homogenous areas with similar cultivars, while the accuracy of a semi-physical model depends upon the resolution of the utilized data. The DSSAT model is effective in predicting yields at specific locations but faces difficulties when trying to extend these predictions to cover a larger study area. This research provides valuable insights for policymakers by providing near-real-time, high-resolution crop yield estimates at the local level, facilitating informed decision making in attaining food security.
Reference56 articles.
1. Uniting remote sensing, crop modelling and economics for agricultural risk management;Benami;Nat. Rev. Earth Environ.,2021 2. Market share and promotional approaches of pesticide companies for vegetable crops in jammu district;Ahlawat;Int. J. Soc. Sci.,2021 3. Ramadas, S., Kumar, T.K., and Singh, G.P. (2019). Recent Advances in Grain Crops Research, IntechOpen. 4. Meraj, G., Kanga, S., Ambadkar, A., Kumar, P., Singh, S.K., Farooq, M., Johnson, B.A., Rai, A., and Sahu, N. (2022). Assessing the yield of wheat using satellite remote sensing-based machine learning algorithms and simulation modeling. Remote Sens., 14. 5. Multi stage wheat yield estimation using different model under semi arid region of india;Vashisth;Int. Arch. Photogramm. Remote Sens. Spat. Inf. Sci.,2019
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|