基于PROSAIL模型的水稻叶片生物量反演
作者:
作者单位:

1.沈阳农业大学信息与电气工程学院,沈阳 110866;2.辽宁省智慧农业技术重点实验室,沈阳 110866

作者简介:

于丰华,E-mail: adan@syau.edu.cn

通讯作者:

许童羽,E-mail:xutongyu@syau.edu.cn

中图分类号:

TP18;S511

基金项目:

辽宁省教育厅重点攻关项目(LSNZD202005)


Inversion of rice leaf biomass based on PROSAIL model optimization
Author:
Affiliation:

1.College of Information and Electrical Engineering,Shenyang Agricultural University,Shenyang 110866,China;2.Key Laboratory of Smart Agriculture Technology in Liaoning Province, Shenyang 110866,China

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    摘要:

    为解决水稻叶片生物量反演模型普遍存在的泛用性与机理性较差的问题,利用无人机高光谱遥感平台获取水稻冠层400~1 000 nm的高光谱反射率信息,对PROSAIL模型进行参数敏感性分析,根据分析结果利用连续投影法提取敏感波段,在此基础上,结合PROSAIL作物辐射传输模型与水稻高光谱数据,运用秃鹰算法(BES)对PROSAIl模型的生物量参数进行数值优化,从而快速、精准实现水稻关键生育期的叶片生物量反演。结果显示:运用改进 Sobol方法对水稻叶片生物量进行全局敏感性分析,敏感区间为700~1 000 nm。对敏感区间内光谱利用连续投影法提取了750、788、898、940、962、999 nm等6个水稻叶片生物量特征波长。结合PROSAIL模型与BES优化算法,构建了PROSAIL-BES数值优化方法。以水稻特征波段光谱反射率为模型输入,通过PROSAIL-BES数值优化方法对PROSAIL模型参数进行校正,叶片生物量反演结果R2为0.694,RMSE为0.002。结果表明,与传统机器学习模型的反演结果对比,PROSAIL-BES数值优化方法具有更好的反演精度,在水稻生物量反演领域具有较好的实用价值和应用潜力。

    Abstract:

    Biomass accumulation during the growth and development stages of rice is one of the key factors determining the rice yield.With the continuous development of UAV remote sensing technology in recent years,quantitative remote sensing inversion of rice biomass with UAV high-definition images,multispectral and hyperspectral remote sensing data has become an important technique to quickly obtain biomass information at the critical reproductive stages of rice.The UAV hyperspectral remote sensing platform was used to obtain the hyperspectral reflectance information of rice canopy at 400 to 1 000 nm to solve the poor universality and mechanism of inversion models for rice leaf biomass.The sensitivity of parameters for PROSAIL model was analyzed,and the sensitive wavelengths were extracted with continuous projection method according to the results of analyses.On this basis,the bald eagle algorithm (BES) was used to optimize the biomass parameters of the PROSAIL model to quickly and accurately retrieve leaf biomass inversion at the critical reproductive stages of rice through combining the PROSAIL crop radiation transmission model with rice hyperspectral data.The results showed that the improved Sobol method was used to analyze the global sensitivity of rice leaf biomass,and the sensitivity range was 700-1 000 nm.Six characteristic wavelengths of rice leaf biomass,namely 750,788,898,940,962 and 999 nm,were extracted with continuous projection method for the spectra at the sensitive interval.The PROSAIL-BES numerical optimization method was constructed by combining the PROSAIL model with the BES optimization algorithm.Using the spectral reflectance of rice characteristic wavelengths as the input of model,the parameters for the PROSAIL model were corrected by PROSAIL-BES numerical optimization method.The results of leaf biomass inversion showed that R2 was 0.694 and RMSE was 0.002. It is indicated that the PROSAIL-BES numerical optimization method has better accuracy of inversion compared with the inversion results of traditional machine learning models,and has better practical value and application potential in the field of rice biomass inversion.

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于丰华,白驹驰,金忠煜,张鸿刚,许童羽.基于PROSAIL模型的水稻叶片生物量反演[J].华中农业大学学报,2023,42(3):187-194

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  • 收稿日期:2022-09-25
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  • 在线发布日期: 2023-06-20
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