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基于地面高光谱遥感的大豆产量估算模型研究

唐子竣 张威 黄向阳 向友珍 张富仓 陈俊英

农业机械学报2024,Vol.55Issue(1):145-153,240,10.
农业机械学报2024,Vol.55Issue(1):145-153,240,10.DOI:10.6041/j.issn.1000-1298.2024.01.013

基于地面高光谱遥感的大豆产量估算模型研究

Soybean Seed Yield Estimation Model Based on Ground Hyperspectral Remote Sensing Technology

唐子竣 1张威 1黄向阳 1向友珍 1张富仓 1陈俊英1

作者信息

  • 1. 西北农林科技大学旱区农业水土工程教育部重点实验室,陕西杨凌 712100||西北农林科技大学中国旱区节水农业研究院,陕西杨凌 712100
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摘要

Abstract

To estimate crop yield in field management,hyperspectral data and yield data during the reproductive growth period of soybeans through two years of field experiments were collected.Seven spectral indices were calculated based on first-order spectral reflectance at various growth stages.These indices included the ratio index(RI),difference index(DI),normalized difference vegetation index(NDVI),soil-adjusted vegetation index(SAVI),triangular vegetation index(TVI),modified normalized difference index(mNDI),and modified simple ratio(mSR).A correlation analysis between the spectral indices and soybean yield data were conducted by using the correlation matrix method.The best wavelength combinations to be used as the optimal spectral indices related to soybean yield were extracted.Finally,the five spectral indices with the highest correlation coefficients with soybean yield at different growth stages were selected as input variables for the model.Support vector machine(SVM),random forest(RF),and back propagation neural network(BPNN)were utilized to construct soybean yield estimation models and conducted validation.The results indicated that the spectral indices calculated at different growth stages(full flowering stage(R2),full pod stage(R4),and seed filling stage(R6))all exhibited a correlation coefficient greater than 0.6 with yield,showing a strong correlation.Among these,the spectral index FDmSR at the full pod stage had the highest correlation with soybean yield,reaching 0.717.The optimal model for soybean yield estimation was built using first-order spectral indices from the full pod stage in combination with RF as input variables,achieving a validation set R2 of 0.85,and RMSE and MRE values of 272.80 kg/hm2 and 5.12%,respectively.The research outcome can provide a theoretical basis and practical reference for crop yield estimation based on hyperspectral remote sensing technology.

关键词

大豆/产量估算模型/高光谱/光谱指数/机器学习

Key words

soybean/yield estimate model/hyperspectral/spectral index/machine learning

分类

农业科技

引用本文复制引用

唐子竣,张威,黄向阳,向友珍,张富仓,陈俊英..基于地面高光谱遥感的大豆产量估算模型研究[J].农业机械学报,2024,55(1):145-153,240,10.

基金项目

国家自然科学基金项目(52179045) (52179045)

农业机械学报

OA北大核心CSTPCD

1000-1298

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