Construction and UAV-based inversion of integrated nitrogen diagnosis index for cotton using multispectral imagery
Dongdong Zhu, Qiuping Fu, Zhenghu Ma, Shudong Lin, Qinglong Geng, Ming Hong, Jinghua Zhao, Liang Ma, Yingjie Ma, Quanjiu Wang

TL;DR
This study develops a new index for diagnosing cotton nitrogen status using drone-based multispectral imagery and machine learning, improving precision fertilization in drip-irrigated systems.
Contribution
The novel Integrated Nitrogen Diagnosis Index (INDI) and its inversion using XGBoost provide a stable and accurate method for nitrogen diagnosis across cotton growth stages.
Findings
XGBoost achieved the highest inversion accuracy for INDI with R2 = 0.85 and RMSE = 0.61.
INDI showed strong correlation with NNI across growth stages, with the highest accuracy at the boll-setting stage.
INDI spatial distribution maps effectively distinguished nitrogen differences under varying water-nitrogen treatments.
Abstract
Accurate and stable diagnosis of cotton nitrogen status across growth stages is essential for precision fertilization in drip-irrigated systems. However, the instability of conventional nitrogen-related indicators across different phenological stages often reduces diagnostic performance and limits their broader application. A field experiment was conducted in Xinjiang, China, under four irrigation levels (60%, 80%, 100%, and 120% ETc) and four nitrogen application rates (0, 245, 300, and 350 kg N ha-1). UAV multispectral imagery was acquired at the squaring, flowering, boll-setting, and boll-opening stages. Based on ground-measured leaf area index (LAI) and upper-canopy leaf nitrogen weight (LNWupper), an Integrated Nitrogen Diagnosis Index (INDI) was developed. Random Forest (RF), Gradient Boosting Decision Tree (GBDT), and Extreme Gradient Boosting (XGBoost) models were used to…
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Taxonomy
TopicsRemote Sensing in Agriculture · Smart Agriculture and AI · Soil Geostatistics and Mapping
