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Retrieval of LAI and leaf chlorophyll content from remote sensing data by agronomy mechanism knowledge to solve the ill-posed inverse problem

机译:利用农学机制知识从遥感数据中检索LAI和叶绿素含量,解决不适定逆问题

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Leaf area index (LAI) and LCC, as the two most important crop growth variables, are major considerations in management decisions, agricultural planning and policy making. Estimation of canopy biophysical variables from remote sensing data was investigated using a radiative transfer model. However, the ill-posed problem is unavoidable for the unique solution of the inverse problem and the uncertainty of measurements and model assumptions. This study focused on the use of agronomy mechanism knowledge to restrict and remove the ill-posed inversion results. For this purpose, the inversion results obtained using the PROSAIL model alone (NAMK) and linked with agronomic mechanism knowledge (AMK) were compared. The results showed that AMK did not significantly improve the accuracy of LAI inversion. LAI was estimated with high accuracy, and there was no significant improvement after considering AMK. The validation results of the determination coefficient (R~2) and the corresponding root mean square error (RMSE) between measured LAI and estimated LAI were 0.635 and 1.022 for NAMK, and 0.637 and 0.999 for AMK, respectively. LCC estimation was significantly improved with agronomy mechanism knowledge; the R~2 and RMSE values were 0.377 and 14.495 μg cm~(-2) for NAMK, and 0.503 and 10.661 μg cm~(-2) for AMK, respectively. Results of the comparison demonstrated the need for agronomy mechanism knowledge in radiative transfer model inversion.
机译:叶面积指数(LAI)和LCC是两个最重要的作物生长变量,是管理决策,农业计划和政策制定中的主要考虑因素。使用辐射转移模型研究了根据遥感数据估算冠层生物物理变量的方法。但是,不适定的问题对于反问题的唯一解决方案以及测量和模型假设的不确定性是不可避免的。这项研究的重点是利用农学机制知识来限制和消除不适定的反演结果。为此,比较了仅使用PROSAIL模型(NAMK)并与农艺机制知识(AMK)相关联的反演结果。结果表明AMK不能显着提高LAI反演的准确性。对LAI的估计非常准确,考虑AMK后并没有明显改善。对于NAMK,测定的LAI和估计的LAI之间的确定系数(R〜2)和相应的均方根误差(RMSE)的验证结果分别为NAMK和AMK,分别为0.637和0.999。农学机制知识可大大改善LCC估算; NAMK的R〜2和RMSE值分别为0.377和14.495μgcm〜(-2),AMK的R〜2和RMSE值分别为0.503和10.661μgcm〜(-2)。比较结果表明,在辐射传递模型反演中需要农学机制知识。

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