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结合无人机多光谱影像与作物生理参数估算夏玉米生物量

Estimating Summer Maize Biomass by Integrating UAV Multispectral Imagery with Crop Physiological Parameters.

作者信息

Yin Qi, Yu Xingjiao, Li Zelong, Du Yiying, Ai Zizhe, Qian Long, Huo Xuefei, Fan Kai, Wang Wen'e, Hu Xiaotao

机构信息

Key Laboratory of Agricultural Soil and Water Engineering in Arid and Semiarid Areas, Ministry of Education, Northwest AF University, Yangling 712100, China.

College of Water Resources and Architectural Engineering, Northwest AF University, Yangling 712100, China.

出版信息

Plants (Basel). 2024 Oct 31;13(21):3070. doi: 10.3390/plants13213070.

Abstract

The aboveground biomass (AGB) of summer maize is an important indicator for assessing crop growth status and predicting yield, playing a significant role in agricultural management and decision-making. Traditional on-site measurements of AGB are limited, due to low efficiency and a lack of spatial information. The development of unmanned aerial vehicle (UAV) technology in agriculture offers a rapid and cost-effective method for obtaining crop growth information, but currently, the prediction accuracy of summer maize AGB based on UAVs is limited. This study focuses on the entire growth period of summer maize. Multispectral images of six key growth stages of maize were captured using a DJI Phantom 4 Pro, and color indices and elevation data (DEM) were extracted from these growth stage images. Combining measured data such as summer maize AGB and plant height, which were collected on the ground, and based on the three machine learning algorithms of partial least squares regression (PLSR), random forest (RF), and long short-term memory (LSTM), an input feature analysis of PH was carried out, and a prediction model of summer maize AGB was constructed. The results show that: (1) using unmanned aerial vehicle spectral data (CIS) alone to predict the biomass of summer maize has relatively poor prediction accuracy. Among the three models, the LSTM (CIS) model has the best simulation effect, with a coefficient of determination (R) ranging from 0.516 to 0.649. The R of the RF (CIS) model is 0.446-0.537. The R of the PLSR (CIS) model is 0.323-0.401. (2) After adding plant height (PH) data, the accuracy and stability of model prediction significantly improved. R increased by about 25%, and both RMSE and NRSME decreased by about 20%. Among the three prediction models, the LSTM (PH + CIS) model had the best performance, with R = 0.744, root mean square error (RSME) = 4.833 g, and normalized root mean square error (NRSME) = 0.107. Compared to using only color indices (CIS) as the model input, adding plant height (PH) significantly enhances the prediction effect of AGB (aboveground biomass) prediction in key growth periods of summer maize. This method can serve as a reference for the precise monitoring of crop biomass status through remote sensing with unmanned aerial vehicles.

摘要

夏玉米地上生物量(AGB)是评估作物生长状况和预测产量的重要指标,在农业管理和决策中发挥着重要作用。传统的AGB实地测量由于效率低且缺乏空间信息而受到限制。农业中无人机(UAV)技术的发展为获取作物生长信息提供了一种快速且经济高效的方法,但目前基于无人机的夏玉米AGB预测精度有限。本研究聚焦于夏玉米的整个生育期。使用大疆精灵4 Pro获取了玉米六个关键生育期的多光谱图像,并从这些生育期图像中提取了颜色指数和高程数据(DEM)。结合地面采集的夏玉米AGB和株高等实测数据,基于偏最小二乘回归(PLSR)、随机森林(RF)和长短期记忆(LSTM)三种机器学习算法,对株高进行了输入特征分析,并构建了夏玉米AGB预测模型。结果表明:(1)仅使用无人机光谱数据(CIS)预测夏玉米生物量,预测精度相对较差。在这三种模型中,LSTM(CIS)模型模拟效果最佳,决定系数(R)在0.516至0.649之间。RF(CIS)模型的R为0.446 - 0.537。PLSR(CIS)模型的R为0.323 - 0.401。(2)添加株高(PH)数据后,模型预测的准确性和稳定性显著提高。R提高了约25%,均方根误差(RMSE)和归一化均方根误差(NRSME)均下降了约20%。在这三种预测模型中,LSTM(PH + CIS)模型性能最佳,R = 0.744,均方根误差(RSME) = 4.833 g,归一化均方根误差(NRSME) = 0.107。与仅使用颜色指数(CIS)作为模型输入相比,添加株高(PH)显著增强了夏玉米关键生育期AGB(地上生物量)预测的效果。该方法可为利用无人机遥感精确监测作物生物量状况提供参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9bf5/11548054/a938d2116394/plants-13-03070-g001.jpg

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