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面向干旱条件下的冬小麦估产HLM模型改进研究

赵培钦 刘长斌 郑婕 孟炀 梅新 陶婷 赵倩 梅广源 杨小冬

智慧农业(中英文)2025,Vol.7Issue(2):106-116,11.
智慧农业(中英文)2025,Vol.7Issue(2):106-116,11.DOI:10.12133/j.smartag.SA202408009

面向干旱条件下的冬小麦估产HLM模型改进研究

Improvement of HLM Modeling for Winter Wheat Yield Estimation Under Drought Conditions

赵培钦 1刘长斌 2郑婕 1孟炀 2梅新 3陶婷 1赵倩 1梅广源 1杨小冬2

作者信息

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

摘要

Abstract

[Objective]Winter wheat yield is crucial for national food security and the standard of living of the population.Existing crop yield prediction models often show low accuracy under disaster-prone climatic conditions.This study proposed an improved hierarchi-cal linear model(IHLM)based on a drought weather index reduction rate,aiming to enhance the accuracy of crop yield estimation un-der drought conditions.[Methods]HLM was constructed using the maximum enhanced vegetation index-2(EVI2max),meteorologi-cal data(precipitation,radiation,and temperature from March to May),and observed winter wheat yield data from 160 agricultural survey stations in Shandong province(2018-2021).To validate the model's accuracy,70%of the data from Shandong province was randomly selected for model construction,and the remaining data was used to validate the accuracy of the yield model.HLM consid-ered the variation in meteorological factors as a key obstacle affecting crop growth and improved the model by calculating the relative meteorological factors.The calculation of relative meteorological factors helped reduce the impact of inter-annual differences in mete-orological data.The accuracy of the HLM model was compared with that of the random forest(RF),Support Vector Regression(SVR),and Extreme Gradient Boosting(XGBoost)models.The HLM model provided more intuitive interpretation,especially suit-able for processing hierarchical data,which helped capture the variability of winter wheat yield data under drought conditions.There-fore,a drought weather index reduction rate model from the agricultural insurance industry was introduced to further optimize the HLM model,resulting in the construction of the IHLM model.The IHLM model was designed to improve crop yield prediction accu-racy under drought conditions.Since the precipitation differences between Henan and Shandong provinces were small,to test the transferability of the IHLM model,Henan province sample data was processed in the same way as in Shandong,and the IHLM model was applied to Henan province to evaluate its performance under different geographical conditions.[Results and Discussions]The accu-racy of the HLM model,improved based on relative meteorological factors(rMF),was higher than that of RF,SVR,and XGBoost.The validation accuracy showed a Pearson correlation coefficient(r)of 0.76,a root mean squared error(RMSE)of 0.60 t/hm2,and a normalized RMSE(nRMSE)of 11.21%.In the drought conditions dataset,the model was further improved by incorporating the rela-tionship between the winter wheat drought weather index and the reduction rate of winter wheat yield.After the improvement,the RMSE decreased by 0.48 t/hm2,and the nRMSE decreased by 28.64 percentage points,significantly enhancing the accuracy of the IHLM model under drought conditions.The IHLM model also demonstrated good applicability when transferred to Henan province.[Conclusions]The IHLM model developed in this study improved the accuracy and stability of crop yield predictions,especially under drought conditions.Compared to RF,SVR,and XGBoost models,the IHLM model was more suitable for predicting winter wheat yield.This research can be widely applied in the agricultural insurance field,playing a significant role in the design of agricultural in-surance products,rate setting,and risk management.It enables more accurate predictions of winter wheat yield under drought condi-tions,with results that are closer to actual outcomes.

关键词

冬小麦/产量预测/HLM模型/干旱/机器学习

Key words

winter wheat/yield prediction/HLM model/drought conditions/mechine learning

分类

农业科学

引用本文复制引用

赵培钦,刘长斌,郑婕,孟炀,梅新,陶婷,赵倩,梅广源,杨小冬..面向干旱条件下的冬小麦估产HLM模型改进研究[J].智慧农业(中英文),2025,7(2):106-116,11.

基金项目

国家重点研发计划项目(2023YFD2000105) National Key Research and Development Program of China(2023YFD2000105) (2023YFD2000105)

智慧农业(中英文)

2096-8094

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