Comprehensive growth monitoring index using Sentinel-2A data for large-scale cotton production

IF 5.6 1区 农林科学 Q1 AGRONOMY Field Crops Research Pub Date : 2024-08-11 DOI:10.1016/j.fcr.2024.109525
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引用次数: 0

Abstract

Problem

Timely and accurate plant growth monitoring is crucial for precision crop management. Traditional remote sensing methods use a single agronomic parameter to evaluate crop growth status (GST), limiting accuracy.

Objective

To develop a comprehensive growth monitoring index (CGMI) based on multiple parameters.

Methods

A two-year field experiment in the Mosuwan Reclamation Region of Xinjiang, China was conducted to collect parameter characterization data for cotton growth, including leaf area index, canopy chlorophyll content, above-ground biomass, and boll numbers, and their contributions and interrelationships in relation to yield were analyzed. Entropy and game theory weighting methods were used to establish the CGMIEWM and CGMIGT, and a sequential forward selection algorithm (SFS) was used to screen the most effective remote-sensing monitoring feature variables for the different reproductive stages. Partial least squares regression (PLSR), random forest (RF), and support vector regression (SVR) were used to develop an optimal model to comprehensively monitor cotton growth and draw a spatial distribution map.

Results

CGMIEWM and CGMIGT could effectively reflect GST. The correlation between CGMIGT and yield based on a game theory combination weighting method was significantly higher than that between yield and each agronomic parameter. The correlation between CGMIGT and yield (r = 0.75) was slightly higher at the initial boll stage than that of CGMIEWM (r = 0.73), whereas at the initial boll-opening stage, the correlation between CGMIGT and yield (r = 0.74) was significantly higher than that of CGMIEWM (r = 0.63). The weight coefficients used to construct the CGMIGT exhibited stable performance in different years. Feature variables were selected to monitor the comprehensive growth of cotton at different stages based on the SFS algorithm. PLSR, RF, and SVR were used to estimate CGMIGT. The RF algorithm had the best estimation performance in both the initial boll and initial boll-opening stages (R² = 0.63, root mean square error (RMSE) = 0.086, RE = 19.8 % vs. R² = 0.56, RMSE = 0.107, RE = 24.1 %). A comprehensive cotton growth distribution map in the Mosuwan Reclamation Region was drawn using the optimal model, and growth was comprehensively evaluated. Areas with good cotton growth were concentrated in the north, and there was a decreasing trend from north to south.

Conclusions

We provide a new comprehensive evaluation tool for cotton growth status large-scale, real-time monitoring.

Significance

Our results promote differentiated management, improve crop yield prediction accuracy, and aid in the formulation of cotton price strategies.

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利用哨兵-2A 数据为大规模棉花生产提供综合生长监测指数
及时准确的植物生长监测对作物精准管理至关重要。传统的遥感方法使用单一的农艺参数来评估作物生长状况(GST),从而限制了准确性。为了开发基于多个参数的综合生长监测指数(CGMI)。在中国新疆莫素湾垦区进行了为期两年的田间试验,收集了棉花生长的参数特征数据,包括叶面积指数、冠层叶绿素含量、地上生物量和棉铃数,并分析了它们对产量的贡献和相互关系。利用熵和博弈论加权法建立了 CGMI 和 CGMI,并利用顺序前向选择算法(SFS)筛选出不同生育阶段最有效的遥感监测特征变量。利用偏最小二乘回归(PLSR)、随机森林(RF)和支持向量回归(SVR)建立了全面监测棉花生长和绘制空间分布图的最优模型。CGMI 和 CGMI 能有效反映 GST。基于博弈论组合加权法的 CGMI 与产量之间的相关性明显高于产量与各农艺参数之间的相关性。在棉铃初生期,CGMI 与产量的相关性(r = 0.75)略高于 CGMI(r = 0.73),而在棉铃初开期,CGMIGT 与产量的相关性(r = 0.74)明显高于 CGMI(r = 0.63)。用于构建 CGMI 的权重系数在不同年份表现稳定。根据 SFS 算法选择了特征变量来监测棉花在不同阶段的综合生长情况。RF 算法在棉铃初生和棉铃初开阶段的估计性能最佳(R² = 0.63,均方根误差(RMSE) = 0.086,RE = 19.8 %;R² = 0.56,均方根误差(RMSE) = 0.107,RE = 24.1 %)。利用最优模型绘制了莫苏湾垦区棉花生长综合分布图,并对生长情况进行了综合评价。棉花长势较好的区域集中在北部,且有由北向南递减的趋势。我们为大规模、实时监测棉花生长状况提供了一种新的综合评价工具。我们的成果促进了差异化管理,提高了作物产量预测的准确性,有助于制定棉花价格策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Field Crops Research
Field Crops Research 农林科学-农艺学
CiteScore
9.60
自引率
12.10%
发文量
307
审稿时长
46 days
期刊介绍: Field Crops Research is an international journal publishing scientific articles on: √ experimental and modelling research at field, farm and landscape levels on temperate and tropical crops and cropping systems, with a focus on crop ecology and physiology, agronomy, and plant genetics and breeding.
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