Key Laboratory of Digital Earth Science, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100094, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2020 Apr 28;20(9):2493. doi: 10.3390/s20092493.
Solar-induced chlorophyll fluorescence (SIF) has been proven to be well correlated with vegetation photosynthesis. Although multiple studies have found that SIF demonstrates a strong correlation with gross primary production (GPP), SIF-based GPP estimation at different temporal scales has not been well explored. In this study, we aimed to investigate the quality of GPP estimates produced using the far-red SIF retrieved at 760 nm (SIF) based on continuous tower-based observations of a maize field made during 2017 and 2018, and to explore the responses of GPP and SIF to different meteorological conditions, such as the amount of photosynthetically active radiation (PAR), the clearness index (CI, representing the weather condition), the air temperature (AT), and the vapor pressure deficit (VPD). Firstly, our results showed that the SIF tracked GPP well at both diurnal and seasonal scales, and that SIF was more linearly correlated to PAR than GPP was. Therefore, the SIF-GPP relationship was clearly a hyperbolic relationship. For instantaneous observations made within a period of half an hour, the R value was 0.66 in 2017 and 2018. Based on daily mean observations, the R value was 0.82 and 0.76 in 2017 and 2018, respectively. and had an R value of 0.66 (2017) and 0.66 (2018) for instantaneous observations made within a period of half an hour and 0.82 (2017) and 0.76 (2018) for daily mean observations. Secondly, it was found that the SIFGPP relationship varied with the environmental conditions, with the CI being the dominant factor. At both diurnal and seasonal scales, the ratio of GPP to SIF decreased noticeably as the CI increased. Finally, the SIF-based GPP models with and without the inclusion of CI were trained using 70% of daily observations from 2017 and 2018 and the models were validated using the remaining 30% of the dataset. For both linear and non-linear models, the inclusion of the CI greatly improved the SIF-based GPP estimates based on daily mean observations: the value of R increased from 0.71 to 0.82 for the linear model and from 0.82 to 0.87 for the non-linear model. The validation results confirmed that the SIF-based GPP estimation was improved greatly by including the CI, giving a higher R and a lower RMSE. These values improved from R = 0.66 and RMSE = 7.02 mw/m/nm/sr to R = 0.76 and RMSE = 6.36 mw/m/nm/sr for the linear model, and from R = 0.71 and RMSE = 4.76 mw/m/nm/sr to R = 0.78 and RMSE = 3.50 mw/m/nm/sr for the non-linear model. Therefore, our results demonstrated that SIF is a reliable proxy for GPP and that SIF-based GPP estimation can be greatly improved by integrating the CI with SIF. These findings will be useful in the remote sensing of vegetation GPP using satellite, airborne, and tower-based SIF data because the CI is usually an easily accessible meteorological variable.
太阳诱导叶绿素荧光(SIF)已被证明与植被光合作用密切相关。尽管多项研究发现 SIF 与总初级生产力(GPP)具有很强的相关性,但不同时间尺度的 SIF 基 GPP 估算尚未得到充分探索。本研究旨在调查基于塔式连续观测获得的 760nm 远红 SIF(SIF)估算的 2017 年和 2018 年玉米田 GPP 的质量,并探讨 GPP 和 SIF 对不同气象条件的响应,如光合有效辐射(PAR)、晴朗指数(CI,代表天气状况)、空气温度(AT)和水汽压亏缺(VPD)。首先,我们的结果表明 SIF 在日变化和季节变化尺度上均能很好地跟踪 GPP,并且 SIF 与 PAR 的线性相关性强于 GPP。因此,SIF-GPP 关系显然是一种双曲线关系。对于在半小时内进行的瞬时观测,2017 年和 2018 年的 R 值分别为 0.66 和 0.76。基于日均值观测,2017 年和 2018 年的 R 值分别为 0.82 和 0.76。在半小时内进行的瞬时观测中,R 值分别为 0.66(2017 年)和 0.66(2018 年),日均值观测中,R 值分别为 0.82(2017 年)和 0.76(2018 年)。其次,发现 SIF-GPP 关系随环境条件而变化,CI 是主要因素。在日变化和季节变化尺度上,随着 CI 的增加,GPP 与 SIF 的比值明显下降。最后,使用 2017 年和 2018 年 70%的日观测数据训练包含和不包含 CI 的 SIF 基 GPP 模型,并使用数据集的其余 30%进行验证。对于线性和非线性模型,包含 CI 均可显著提高基于日均值观测的 SIF 基 GPP 估算:线性模型的 R 值从 0.71 增加到 0.82,非线性模型的 R 值从 0.82 增加到 0.87。验证结果证实,通过包含 CI,SIF 基 GPP 估算得到了极大的改善,R 值更高,RMSE 更低。线性模型的 R 值从 0.66 和 RMSE = 7.02mw/m/nm/sr 提高到 0.76 和 RMSE = 6.36mw/m/nm/sr,非线性模型的 R 值从 0.71 和 RMSE = 4.76mw/m/nm/sr 提高到 0.78 和 RMSE = 3.50mw/m/nm/sr。因此,我们的结果表明 SIF 是 GPP 的可靠替代物,通过将 CI 与 SIF 相结合,可以大大提高 SIF 基 GPP 估算的精度。这些发现对于利用卫星、机载和塔式 SIF 数据对植被 GPP 的遥感将非常有用,因为 CI 通常是一种易于获取的气象变量。