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Optimizing the Empirical Parameters of the Data-Driven Algorithm for SIF Retrieval for SIFIS Onboard TECIS-1 Satellite

机译:用于SIFIS船上的SIF检索数据驱动算法的实证参数SIFIS on栏杆TECIS-1卫星

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摘要

Space-based solar-induced chlorophyll fluorescence (SIF) has been widely demonstrated as a great proxy for monitoring terrestrial photosynthesis and has been successfully retrieved from satellite-based hyperspectral observations using a data-driven algorithm. As a semi-empirical algorithm, the data-driven algorithm is strongly affected by the empirical parameters in the model. Here, the influence of the data-driven algorithm’s empirical parameters, including the polynomial order (np), the number of feature vectors (nSV), the fluorescence emission spectrum function, and the fitting window used in the retrieval model, were quantitatively investigated based on the simulations of the SIF Imaging Spectrometer (SIFIS) onboard the First Terrestrial Ecosystem Carbon Inventory Satellite (TECIS-1). The results showed that the fitting window, np, and nSV were the three main factors that influenced the accuracy of retrieval. The retrieval accuracy was relatively higher for a wider fitting window; the root mean square error (RMSE) was lower than 0.7 mW m−2 sr−1 nm−1 with fitting windows wider than 735–758 nm and 682–691 nm for the far-red band and the red band, respectively. The RMSE decreased first and then increased with increases in np range from 1 to 5 and increased in nSV range from 2 to 20. According to the specifications of SIFIS onboard TECIS-1, a fitting window of 735–758 nm, a second-order polynomial, and four feature vectors are the optimal parameters for far-red SIF retrieval, resulting in an RMSE of 0.63 mW m−2 sr−1 nm−1. As for red SIF retrieval, using second-order polynomial and seven feature vectors in the fitting window of 682–697 nm was the optimal choice and resulted in an RMSE of 0.53 mW m−2 sr−1 nm−1. The optimized parameters of the data-driven algorithm can guide the retrieval of satellite-based SIF and are valuable for generating an accurate SIF product of the TECIS-1 satellite after its launch.
机译:基于空间的太阳能诱导的叶绿素荧光(SIF)被广泛证明了监测地面光合作用的伟大代理,并且已经使用数据驱动算法从基于卫星的高光谱观测成功检索。作为半经验算法,数据驱动算法受模型中的经验参数的强烈影响。这里,基于基于基于定量研究了数据驱动算法的经验参数,包括多项式阶(NP),包括多项式阶(NP),特征向量(NSV),荧光发射光谱功能和拟合窗口的拟合窗口关于SIF成像光谱仪(SIFIS)的模拟第一陆地生态系统碳库存卫星(TECIS-1)。结果表明,拟合窗口,NP和NSV是影响检索准确性的三个主要因素。更广泛的窗户的检索精度相对较高;根均方误差(RMSE)分别低于0.7 MW MW M-2 SR-1NM-1,窗户分别用于比735-758nm和682-691nm的宽度为735-758 nm和682-691 nm。首先,RMSE减少,然后随着NP的增加,从1到5的增加,NSV范围内增加到20到20.根据SIFIS船上的规格,拟合窗口为735-758nm,二阶多项式和四个特征向量是远红色SIF检索的最佳参数,导致RMSE为0.63 mW M-2 SR-1nm-1。至于红色SIF检索,在682-697 nm的配合窗口中使用二阶多项式和七个特征向量是最佳选择,导致RMSE为0.53mW M-2 SR-1nm-1。数据驱动算法的优化参数可以引导基于卫星的SIF的检索,并且对于发射后的TECIS-1卫星的精确SIF产品是有价值的。

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