Prediction of copper contamination in soil across EU using spectroscopy and machine learning: handling class imbalance problem DOI Creative Commons
Chongchong Qi,

Nana Zhou,

Tao Hu

et al.

Smart Agricultural Technology, Journal Year: 2024, Volume and Issue: unknown, P. 100728 - 100728

Published: Dec. 1, 2024

Language: Английский

Image-based and ML-driven analysis for assessing blueberry fruit quality DOI Creative Commons
Marcelo Rodrigues Barbosa Júnior,

Regimar Garcia dos Santos,

Lucas de Azevedo Sales

et al.

Heliyon, Journal Year: 2025, Volume and Issue: unknown, P. e42288 - e42288

Published: Jan. 1, 2025

Language: Английский

Citations

2

Prediction of Winter Wheat Parameters with Planet SuperDove Imagery and Explainable Artificial Intelligence DOI Creative Commons
Gabriele De Carolis, Vincenzo Giannico, Leonardo Costanza

et al.

Agronomy, Journal Year: 2025, Volume and Issue: 15(1), P. 241 - 241

Published: Jan. 19, 2025

This study investigated the application of high-resolution satellite imagery from SuperDove satellites combined with machine learning algorithms to estimate spatiotemporal variability some winter wheat parameters, including relative leaf chlorophyll content (RCC), water (RWC), and aboveground dry matter (DM). The research was carried out within an experimental field in Southern Italy during 2024 growing season. Different (ML) were trained compared using spectral band data calculated vegetation indices (VIs) as predictors. Model performance assessed R2 RMSE. ML models tested random forest (RF), support vector regressor (SVR), extreme gradient boosting (XGB). RF outperformed other prediction RCC when VIs predictors (R2 = 0.81) RWC DM bands 0.71 0.87, respectively). explainability SHAP method. A analysis highlighted that GNDVI, Cl1, NDRE most important for predicting RCC, while yellow red prediction, nir prediction. best model found each target used its seasonal trend produce a map. approach highlights potential integrating remote monitoring wheat, which can sustainable farming practices.

Language: Английский

Citations

1

Improving wheat yield prediction through variable selection using Support Vector Regression, Random Forest, and Extreme Gradient Boosting DOI Creative Commons

Juan Carlos Moreno Sánchez,

Héctor Mesa, Adrián Trueba Espinosa

et al.

Smart Agricultural Technology, Journal Year: 2025, Volume and Issue: unknown, P. 100791 - 100791

Published: Jan. 1, 2025

Language: Английский

Citations

0

Enhancing food security: machine learning-based wheat yield prediction using remote sensing and climate data in Pakistan DOI
Ahmed Nadeem, Syed Amer Mahmood, Syed Amer Mahmood

et al.

Theoretical and Applied Climatology, Journal Year: 2025, Volume and Issue: 156(5)

Published: April 25, 2025

Language: Английский

Citations

0

Field based evaluation of wheat cultivars under graded nitrogen levels in North-West India DOI Creative Commons
Sandeep Gawdiya, Dinesh Kumar, Ramandeep Kumar Sharma

et al.

Frontiers in Agronomy, Journal Year: 2025, Volume and Issue: 7

Published: May 22, 2025

Nutrients uptake by plants from the soil depends on fertilizers applied, physical and chemical properties of soil, various environmental biological factors. Each nutrients have a positive or negative interaction with other in terms their availability plants. The purpose this study is to investigate effects successive increases nitrogen (N) macronutrient uptake, system productivity (SP), wheat equivalent yield (WEY) wheat. This was carried out split plot design three distinct N input (N0, N75, N150) main ten cultivars sub-plot over two consecutive years (2020-21 2021-22) New Delhi, India. highest SP 9.85 t/ha -1 , P & K grain (PUG) 21.6 23.8 kg/ha straw (PUS) 13 106.4 total phosphorus (TPU) 34.6 130.4 were obtained ‘HD 3249’ cultivar, followed 3117’. application N75 N150 increased 57.9% 99.2%, WEY 45.2% 61.5%, PUG 105.2% 227%, PUS 94% 182%, TPU 100.5% 208.7%, respectively, N0. findings indicate that fertilization positively influences wheat, 3117’ emerging as efficient candidates for optimizing utilization. These hold significant potential breeding programs aimed at enhancing nutrient while maintaining productivity. Furthermore, incorporating nitrification inhibition traits into these recommended develop climate-smart varieties.

Language: Английский

Citations

0

A Data-Driven Approach to Improve Cocoa Crop Establishment in Colombia: Insights and Agricultural Practice Recommendations from an Ensemble Machine Learning Model DOI Creative Commons
Leonardo Hernán Talero Sarmiento, Sebastián Roa Prada,

Luz Caicedo-Chacon

et al.

AgriEngineering, Journal Year: 2024, Volume and Issue: 7(1), P. 6 - 6

Published: Dec. 28, 2024

This study addresses the critical challenge of limited understanding environmental factors influencing cocoa cultivation in Colombia, a region with significant production potential but diverse agroecological conditions. The fragmented nature existing agricultural data and lack targeted research hinder efforts to optimize productivity sustainability. To bridge this gap, employs data-driven approach, using advanced machine learning techniques such as supervised, unsupervised, ensemble models, analyze datasets provide actionable recommendations. By integrating from official Colombian sources, well NASA POWER database, geographical APIs, present proposes methodology systematically assess conditions classify regions for optimal cultivation. use an assembled model, combining clustering each cluster, offers more precise scalable establishment under Despite challenges dataset resolution localized climate variability, provides valuable insights comprehensive impacting plantation given location. key findings reveal that temperature, humidity, wind speed are crucial determinants growth, complex interactions affecting regional suitability. results offer guidance implementation adaptive practices resilience strategies, enabling sustainable systems. implementing better practices, countries Colombia can achieve higher market shares growing global demand

Language: Английский

Citations

2

Monitoring Wheat Crop Biochemical Responses to Random Rainfall Stress Using Remote Sensing: A Multi-Data Approach DOI Creative Commons
Ekta Panwar, Dharmendra Singh, Ashwani Kumar Sharma

et al.

IEEE Access, Journal Year: 2024, Volume and Issue: 12, P. 174144 - 174157

Published: Jan. 1, 2024

Language: Английский

Citations

0

Prediction of copper contamination in soil across EU using spectroscopy and machine learning: handling class imbalance problem DOI Creative Commons
Chongchong Qi,

Nana Zhou,

Tao Hu

et al.

Smart Agricultural Technology, Journal Year: 2024, Volume and Issue: unknown, P. 100728 - 100728

Published: Dec. 1, 2024

Language: Английский

Citations

0