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Research on Precise Fertilization Method of Rice Tillering Stage Based on UAV Hyperspectral Remote Sensing Prescription Map

Fenghua Yu, Juchi Bai, Zhongyu Jin, Honggang Zhang, Zhonghui Guo, Chunling Chen

2022Agronomy33 citationsDOIOpen Access PDF

Abstract

Tillering fertilization is an important part of field management in rice production. As the first peak fertilizer requirement period of rice, tillering fertilization directly affects the number of tillers and the growth of rice in the middle and late stages. In order to investigate a method of constructing an accurate fertilizer prescription map in the tillering stage using an unmanned aerial vehicle (UAV) remote sensing nitrogen demand diagnosis and reduce the amount of chemical fertilizer while ensuring the rice yield, this study realized the diagnosis of the rice nitrogen nutrient demand using UAV hyperspectral remote sensing during the tilling stage fertilization window. The results showed that the fertilizer amount was determined using the characteristic waveband and remote sensing. The results showed that five rice hyperspectral variables were extracted in the range of 450–950 nm by the feature band selection and feature extraction for the inversion of rice nitrogen content, and the inversion model of rice nitrogen content constructed by the whale-optimized extreme learning machine (WOA-ELM) was better than that constructed by the whale-optimized extreme learning machine (ELM). The model coefficient of determination was 0.899 and the prescription map variable fertilizer application method based on the nitrogen content inversion results reduced the nitrogen fertilizer by 23.21%. The results of the study can provide data and a model basis for precise variable fertilizer tracking by agricultural drones in the cold rice tillering stage.

Topics & Concepts

Hyperspectral imagingFertilizerEnvironmental sciencePrecision agricultureAgronomyRemote sensingExtreme learning machineNitrogen fertilizerPrincipal component analysisMathematicsAgricultural engineeringComputer scienceArtificial intelligenceAgricultureEngineeringBiologyGeologyEcologyArtificial neural networkSmart Agriculture and AIRemote Sensing in AgricultureWater Quality Monitoring Technologies