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基于VSURF-CA的小麦条锈病高光谱病情指数估测模型

梅广源 赵培钦 杨小冬 李荣 梅新 陈日强 樊意广 程金鹏 冯子恒 陶婷 赵倩

中国农业科学2024,Vol.57Issue(3):484-499,16.
中国农业科学2024,Vol.57Issue(3):484-499,16.DOI:10.3864/j.issn.0578-1752.2024.03.005

基于VSURF-CA的小麦条锈病高光谱病情指数估测模型

A VSURF-CA Based Hyperspectral Disease Index Estimation Model of Wheat Stripe Rust

梅广源 1赵培钦 1杨小冬 2李荣 3梅新 3陈日强 2樊意广 2程金鹏 2冯子恒 2陶婷 1赵倩1

作者信息

  • 1. 北京市农林科学院信息技术研究中心/农业农村部农业遥感机理与定量遥感重点实验室,北京 100097||湖北大学资源与环境学院,武汉 430062
  • 2. 北京市农林科学院信息技术研究中心/农业农村部农业遥感机理与定量遥感重点实验室,北京 100097
  • 3. 湖北大学资源与环境学院,武汉 430062
  • 折叠

摘要

Abstract

[Objective]Stripe rust is a serious threat to the growth and yield of wheat.Accurate monitoring and diagnostic assessment are fundamental prerequisites for effective prevention and control of stripe rust.The objective of this study is to construct a wheat stripe rust estimation model using remote sensing technology,enable the rapid and precise estimation of the disease index(DI),and to provide technical support for precise prevention and control.[Method]The hyperspectral data of wheat at different growth stages(heading period,grain-filling period,and maturity period)were acquired through the ASD spectrometer.Initially,the variable selection using random forests(VSURF)method,combined with correlation analysis(CA),was applied to select characteristic bands from the original spectrum(OR)and the first-order differential spectrum(FD).Subsequently,the random forest(RF)algorithm was utilized to compare modeling results of characteristic bands from different datasets,identifying the feature set with the most effective model.Further,models such as partial least squares regression(PLSR),extreme gradient boosting(XGBoost),and back-propagation neural network(BPNN)were employed to compare the modeling effects of different feature sets within various algorithms.This comprehensive analysis aimed to determine the optimal estimation model for wheat stripe rust DI across the entire growth period.Simultaneously,to validate the effectiveness of the feature set across different growth stages,the feature set was used to rebuild models during each of the three distinct growth periods.[Result]The comparative analysis of model effects revealed that the VSURF-CA-FD feature set(537 nm in the green range and 821,846 nm in the near-infrared range)demonstrated the most effective estimation within the RF model,achieving an R2 value of 0.89 and an RMSE of 12.34.These feature bands also exhibited precision in models constructed with other algorithms,including XGBoost(R2:0.87,RMSE:13.15),BPNN(R2:0.84,RMSE:15.19),and PLSR(R2:0.69,RMSE:20.92).For models constructed during different growth stages,the early growth stage(heading period)exhibited an R2 value of 0.54,RMSE of 1.29,and NRMSE of 0.21,meeting the requirements for disease estimation.In the middle growth stage(grain-filling period),the model performed well with an R2 of 0.66,RMSE of 12.24,and NRMSE of 0.21.In the late growth stage(maturity period),the model's effectiveness surpassed that of the previous two stages,with an R2 of 0.75,RMSE of 10.77,and NRMSE of 0.15.[Conclusion]Utilizing characteristic bands selected through the VSURF-CA method,an RF model with excellent estimation accuracy for wheat stripe rust DI can be established.The research outcomes will provide valuable insights and methodologies for predicting early and mid-stage stripe rust DI.

关键词

高光谱估测模型/小麦条锈病/病情指数/VSURF/特征选择

Key words

hyperspectral estimation model/wheat stripe rust/disease index(DI)/VSURF/feature selection

引用本文复制引用

梅广源,赵培钦,杨小冬,李荣,梅新,陈日强,樊意广,程金鹏,冯子恒,陶婷,赵倩..基于VSURF-CA的小麦条锈病高光谱病情指数估测模型[J].中国农业科学,2024,57(3):484-499,16.

基金项目

国家重点研发计划(2023YFD2000105)、国家自然科学基金(41771469) (2023YFD2000105)

中国农业科学

OA北大核心CSTPCD

0578-1752

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