The estimation of wheat yield combined with UAV canopy spectral and volumetric data

IF 4 2区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY
Tao Liu, Fei Wu, Nana Mou, Shaolong Zhu, Tianle Yang, Weijun Zhang, Hui Wang, Wei Wu, Yuanyuan Zhao, Chengming Sun, Zhaosheng Yao
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引用次数: 0

Abstract

Estimating wheat yield accurately is crucial for efficient agricultural management. While canopy spectral information is widely used for this purpose, the incorporation of canopy volumetric features (CVFs) remains underexplored. This study bridges this gap by utilizing unmanned aerial vehicle (UAV) multispectral imaging to capture images and elevation data of wheat at key developmental stages—gestation and flowering stages. We innovatively leveraged the elevation differences between these stages to calculate canopy height, develop a novel CVF, and refine the wheat yield prediction model across various wheat varieties, nitrogen fertilizer levels, and planting densities. The integration of canopy volume information significantly enhanced the accuracy of our yield prediction model, as evidenced by an R2 of 0.8380, an RMSE of 313.3 kg/ha, and an nRMSE of 11.33%. This approach not only yielded more precise estimates than models relying solely on spectral data but also introduced a novel dimension to wheat yield estimation methodologies. Our findings suggest that incorporating canopy volume characteristics can substantially optimize wheat yield prediction models, presenting a groundbreaking perspective for agricultural yield estimation.

Abstract Image

结合无人机冠层光谱和体积数据估算小麦产量
准确估算小麦产量对高效农业管理至关重要。虽然冠层光谱信息已被广泛应用于这一目的,但冠层体积特征(CVF)仍未得到充分探索。本研究利用无人机(UAV)多光谱成像技术捕捉小麦关键发育阶段--孕穗期和开花期--的图像和高程数据,弥补了这一空白。我们创新性地利用这些阶段之间的海拔高度差异来计算冠层高度、开发新型 CVF,并完善不同小麦品种、氮肥水平和种植密度下的小麦产量预测模型。集成冠层体积信息大大提高了产量预测模型的准确性,R2 为 0.8380,RMSE 为 313.3 千克/公顷,nRMSE 为 11.33%。与仅依赖光谱数据的模型相比,这种方法不仅能获得更精确的估测结果,还为小麦产量估测方法引入了一个新的维度。我们的研究结果表明,结合冠层体积特征可以大大优化小麦产量预测模型,为农业产量估算提供了一个开创性的视角。
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来源期刊
Food and Energy Security
Food and Energy Security Energy-Renewable Energy, Sustainability and the Environment
CiteScore
9.30
自引率
4.00%
发文量
76
审稿时长
19 weeks
期刊介绍: Food and Energy Security seeks to publish high quality and high impact original research on agricultural crop and forest productivity to improve food and energy security. It actively seeks submissions from emerging countries with expanding agricultural research communities. Papers from China, other parts of Asia, India and South America are particularly welcome. The Editorial Board, headed by Editor-in-Chief Professor Martin Parry, is determined to make FES the leading publication in its sector and will be aiming for a top-ranking impact factor. Primary research articles should report hypothesis driven investigations that provide new insights into mechanisms and processes that determine productivity and properties for exploitation. Review articles are welcome but they must be critical in approach and provide particularly novel and far reaching insights. Food and Energy Security offers authors a forum for the discussion of the most important advances in this field and promotes an integrative approach of scientific disciplines. Papers must contribute substantially to the advancement of knowledge. Examples of areas covered in Food and Energy Security include: • Agronomy • Biotechnological Approaches • Breeding & Genetics • Climate Change • Quality and Composition • Food Crops and Bioenergy Feedstocks • Developmental, Physiology and Biochemistry • Functional Genomics • Molecular Biology • Pest and Disease Management • Post Harvest Biology • Soil Science • Systems Biology
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